Crawl and Visualize ICLR 2019 OpenReview Data

December 5, 2019 · View on GitHub

Descriptions

This Jupyter Notebook contains the data and visualizations that are crawled ICLR 2019 OpenReview webpages. All the crawled data (sorted by the average ratings) can be found here. The accepted papers have an average rating of 6.611 and 4.716 for rejected papers. The distributions are plotted as follows.

Prerequisites

Visualizations

The word clouds formed by keywords of submissions show the hot topics including reinforcement learning, generative adversarial networks, generative models, imitation learning, representation learning, etc.

This figure is plotted with python word cloud generator

from wordcloud import WordCloud
wordcloud = WordCloud(max_font_size=64, max_words=160, 
                      width=1280, height=640,
                      background_color="black").generate(' '.join(keywords))
plt.figure(figsize=(16, 8))
plt.imshow(wordcloud, interpolation="bilinear")
plt.axis("off")
plt.show()

The distributions of reviewer ratings center around 5 to 6 (mean: 5.15).

You can compute how many papers are beaten by yours with

def PR(rating_mean, your_rating):
    pr = np.sum(your_rating >= np.array(rating_mean))/len(rating_mean)*100
    return pr
my_rating = (5+6+7)/3  # your average rating here
print('Your papar beats {:.2f}% of submission '
      '(well, jsut based on the ratings...)'.format(PR(rating_mean, my_rating)))
# ICLR 2017: accept rate 39.1% (198/507) (15 orals and 183 posters)
# ICLR 2018: accept rate 32% (314/981) (23 orals and 291 posters)
# ICLR 2018: accept rate ?% (?/1580)

The top 50 common keywords and their frequency.

The average reviewer ratings and the frequency of keywords indicate that to maximize your chance to get higher ratings would be using the keywords such as theory, robustness, or graph neural network.

How it works

See How to install Selenium and ChromeDriver on Ubuntu.

To crawl data from dynamic websites such as OpenReview, a headless web simulator is created by

from selenium import webdriver
from selenium.webdriver.chrome.options import Options
executable_path = '/Users/waltersun/Desktop/chromedriver'  # path to your executable browser
options = Options()
options.add_argument("--headless")
browser = webdriver.Chrome(options=options, executable_path=executable_path)  

Then, we can get the content of a webpage

browser.get(url)

To know what content we can crawl, we will need to inspect the webpage layout.

I chose to get the content by

key = browser.find_elements_by_class_name("note_content_field")
value = browser.find_elements_by_class_name("note_content_value")

The data includes the abstract, keywords, TL; DR, comments.

Installing Selenium and ChromeDriver on Ubuntu

The following content is hugely borrowed from a nice post written by Christopher Su.

  • Install Google Chrome for Debian/Ubuntu
sudo apt-get install libxss1 libappindicator1 libindicator7
wget https://dl.google.com/linux/direct/google-chrome-stable_current_amd64.deb

sudo dpkg -i google-chrome*.deb
sudo apt-get install -f
  • Install xvfb to run Chrome on a headless device
sudo apt-get install xvfb
  • Install ChromeDriver for 64-bit Linux
sudo apt-get install unzip  # If you don't have unzip package

wget -N http://chromedriver.storage.googleapis.com/2.26/chromedriver_linux64.zip
unzip chromedriver_linux64.zip
chmod +x chromedriver

sudo mv -f chromedriver /usr/local/share/chromedriver
sudo ln -s /usr/local/share/chromedriver /usr/local/bin/chromedriver
sudo ln -s /usr/local/share/chromedriver /usr/bin/chromedriver

If your system is 32-bit, please find the ChromeDriver releases here and modify the above download command.

  • Install Python dependencies (Selenium and pyvirtualdisplay)
pip install pyvirtualdisplay selenium
  • Test your setup in Python
from pyvirtualdisplay import Display
from selenium import webdriver

display = Display(visible=0, size=(1024, 1024))
display.start()
browser = webdriver.Chrome()
browser.get('http://shaohua0116.github.io/')
print(browser.title)
print(browser.find_element_by_class_name('bio').text)

All ICLR 2019 OpenReview data

Collected at 2019-12-05 11:31:13.692315

Number of submissions: 1579 (withdrawn submissions: 0)

RankAverage RatingTitleRatingsVarianceDecision
18.67Generating High Fidelity Images With Subscale Pixel Networks And Multidimensional Upscaling7, 10, 91.25Accept (Oral)
28.67Alista: Analytic Weights Are As Good As Learned Weights In Lista10, 7, 91.25Accept (Poster)
38.33Benchmarking Neural Network Robustness To Common Corruptions And Perturbations7, 9, 90.94Accept (Poster)
48.33On Random Deep Weight-tied Autoencoders: Exact Asymptotic Analysis, Phase Transitions, And Implications To Training9, 8, 80.47Accept (Oral)
58.00Posterior Attention Models For Sequence To Sequence Learning8, 9, 70.82Accept (Poster)
68.00Pay Less Attention With Lightweight And Dynamic Convolutions8, 8, 80.00Accept (Oral)
78.00Slimmable Neural Networks8, 9, 70.82Accept (Poster)
88.00A Unified Theory Of Early Visual Representations From Retina To Cortex Through Anatomically Constrained Deep Cnns8, 8, 80.00Accept (Oral)
98.00Ordered Neurons: Integrating Tree Structures Into Recurrent Neural Networks9, 7, 80.82Accept (Oral)
108.00Temporal Difference Variational Auto-encoder8, 9, 70.82Accept (Oral)
118.00Enabling Factorized Piano Music Modeling And Generation With The Maestro Dataset8, 8, 80.00Accept (Oral)
128.00Variational Discriminator Bottleneck: Improving Imitation Learning, Inverse Rl, And Gans By Constraining Information Flow6, 10, 81.63Accept (Poster)
138.00Near-optimal Representation Learning For Hierarchical Reinforcement Learning8, 9, 70.82Accept (Poster)
148.00Ba-net: Dense Bundle Adjustment Networks9, 7, 80.82Accept (Oral)
158.00Understanding And Improving Interpolation In Autoencoders Via An Adversarial Regularizer7, 8, 90.82Accept (Poster)
168.00Snip: Single-shot Network Pruning Based On Connection Sensitivity8, 7, 90.82Accept (Poster)
178.00Meta-learning Update Rules For Unsupervised Representation Learning8, 8, 80.00Accept (Oral)
188.00Large Scale Gan Training For High Fidelity Natural Image Synthesis8, 7, 90.82Accept (Oral)
198.00Unsupervised Learning Of The Set Of Local Maxima8, 8, 80.00Accept (Poster)
208.00An Empirical Study Of Example Forgetting During Deep Neural Network Learning9, 8, 70.82Accept (Poster)
217.67Learning Robust Representations By Projecting Superficial Statistics Out7, 7, 90.94Accept (Oral)
227.67Automatically Composing Representation Transformations As A Means For Generalization7, 9, 70.94Accept (Poster)
237.67Identifying And Controlling Important Neurons In Neural Machine Translation7, 10, 61.70Accept (Poster)
247.67Towards Robust, Locally Linear Deep Networks8, 8, 70.47Accept (Poster)
257.67Deep Decoder: Concise Image Representations From Untrained Non-convolutional Networks8, 8, 70.47Accept (Poster)
267.67Lagging Inference Networks And Posterior Collapse In Variational Autoencoders7, 8, 80.47Accept (Poster)
277.67A Variational Inequality Perspective On Generative Adversarial Networks8, 8, 70.47Accept (Poster)
287.67Robustness May Be At Odds With Accuracy8, 7, 80.47Accept (Poster)
297.67Knockoffgan: Generating Knockoffs For Feature Selection Using Generative Adversarial Networks6, 10, 71.70Accept (Oral)
307.67Adaptive Input Representations For Neural Language Modeling7, 8, 80.47Accept (Poster)
317.67The Lottery Ticket Hypothesis: Finding Sparse, Trainable Neural Networks5, 9, 91.89Accept (Oral)
327.67Critical Learning Periods In Deep Networks9, 8, 61.25Accept (Poster)
337.67Composing Complex Skills By Learning Transition Policies7, 9, 70.94Accept (Poster)
347.67Supervised Community Detection With Line Graph Neural Networks6, 9, 81.25Accept (Poster)
357.67Learning Deep Representations By Mutual Information Estimation And Maximization7, 7, 90.94Accept (Oral)
367.67Smoothing The Geometry Of Probabilistic Box Embeddings8, 8, 70.47Accept (Oral)
377.67A2bcd: Asynchronous Acceleration With Optimal Complexity7, 7, 90.94Accept (Poster)
387.67Kernel Change-point Detection With Auxiliary Deep Generative Models8, 8, 70.47Accept (Poster)
397.67Imagenet-trained Cnns Are Biased Towards Texture; Increasing Shape Bias Improves Accuracy And Robustness7, 8, 80.47Accept (Oral)
407.67Slalom: Fast, Verifiable And Private Execution Of Neural Networks In Trusted Hardware7, 7, 90.94Accept (Oral)
417.67Sparse Dictionary Learning By Dynamical Neural Networks6, 9, 81.25Accept (Poster)
427.50On The Minimal Supervision For Training Any Binary Classifier From Only Unlabeled Data7, 8, 8, 70.50Accept (Poster)
437.50Exploration By Random Network Distillation4, 9, 10, 72.29Accept (Poster)
447.33Dimensionality Reduction For Representing The Knowledge Of Probabilistic Models6, 7, 91.25Accept (Poster)
457.33Probabilistic Recursive Reasoning For Multi-agent Reinforcement Learning8, 7, 70.47Accept (Poster)
467.33Approximability Of Discriminators Implies Diversity In Gans8, 7, 70.47Accept (Poster)
477.33Evaluating Robustness Of Neural Networks With Mixed Integer Programming7, 8, 70.47Accept (Poster)
487.33Biologically-plausible Learning Algorithms Can Scale To Large Datasets9, 9, 42.36Accept (Poster)
497.33Diagnosing And Enhancing Vae Models9, 6, 71.25Accept (Poster)
507.33Learning To Navigate The Web7, 8, 70.47Accept (Poster)
517.33Transferring Knowledge Across Learning Processes6, 8, 80.94Accept (Oral)
527.33Improving Differentiable Neural Computers Through Memory Masking, De-allocation, And Link Distribution Sharpness Control8, 7, 70.47Accept (Poster)
537.33Towards Metamerism Via Foveated Style Transfer7, 8, 70.47Accept (Poster)
547.33Variance Reduction For Reinforcement Learning In Input-driven Environments7, 9, 61.25Accept (Poster)
557.33Quaternion Recurrent Neural Networks8, 7, 70.47Accept (Poster)
567.33Promp: Proximal Meta-policy Search6, 7, 91.25Accept (Poster)
577.33Label Super-resolution Networks7, 6, 91.25Accept (Poster)
587.33Learning Self-imitating Diverse Policies8, 6, 80.94Accept (Poster)
597.33Learning Protein Sequence Embeddings Using Information From Structure7, 7, 80.47Accept (Poster)
607.33Diffusion Scattering Transforms On Graphs6, 9, 71.25Accept (Poster)
617.33Deep Frank-wolfe For Neural Network Optimization7, 7, 80.47Accept (Poster)
627.33Gradient Descent Aligns The Layers Of Deep Linear Networks7, 9, 61.25Accept (Poster)
637.33Recurrent Experience Replay In Distributed Reinforcement Learning7, 7, 80.47Accept (Poster)
647.33Large-scale Study Of Curiosity-driven Learning6, 9, 71.25Accept (Poster)
657.33Learning Localized Generative Models For 3d Point Clouds Via Graph Convolution9, 6, 71.25Accept (Poster)
667.33Prior Convictions: Black-box Adversarial Attacks With Bandits And Priors7, 8, 70.47Accept (Poster)
677.33Learning Latent Superstructures In Variational Autoencoders For Deep Multidimensional Clustering8, 7, 70.47Accept (Poster)
687.33Learning Grid Cells As Vector Representation Of Self-position Coupled With Matrix Representation Of Self-motion8, 7, 70.47Accept (Poster)
697.33Clarinet: Parallel Wave Generation In End-to-end Text-to-speech9, 6, 71.25Accept (Poster)
707.33Dynamic Sparse Graph For Efficient Deep Learning8, 7, 70.47Accept (Poster)
717.33Learning To Remember More With Less Memorization7, 8, 70.47Accept (Oral)
727.33Gan Dissection: Visualizing And Understanding Generative Adversarial Networks7, 7, 80.47Accept (Poster)
737.33Detecting Egregious Responses In Neural Sequence-to-sequence Models7, 7, 80.47Accept (Poster)
747.33Deep Layers As Stochastic Solvers7, 7, 80.47Accept (Poster)
757.33Small Nonlinearities In Activation Functions Create Bad Local Minima In Neural Networks7, 7, 80.47Accept (Poster)
767.33Efficient Training On Very Large Corpora Via Gramian Estimation7, 8, 70.47Accept (Poster)
777.33Diversity Is All You Need: Learning Skills Without A Reward Function8, 7, 70.47Accept (Poster)
787.33Instagan: Instance-aware Image-to-image Translation7, 8, 70.47Accept (Poster)
797.33Time-agnostic Prediction: Predicting Predictable Video Frames7, 8, 70.47Accept (Poster)
807.33Learning To Schedule Communication In Multi-agent Reinforcement Learning7, 8, 70.47Accept (Poster)
817.33No Training Required: Exploring Random Encoders For Sentence Classification7, 7, 80.47Accept (Poster)
827.33Lanczosnet: Multi-scale Deep Graph Convolutional Networks7, 7, 80.47Accept (Poster)
837.33The Neuro-symbolic Concept Learner: Interpreting Scenes, Words, And Sentences From Natural Supervision7, 6, 91.25Accept (Oral)
847.33How Powerful Are Graph Neural Networks?7, 7, 80.47Accept (Oral)
857.25Episodic Curiosity Through Reachability7, 8, 6, 80.83Accept (Poster)
867.00Strokenet: A Neural Painting Environment7, 8, 60.82Accept (Poster)
877.00Discriminator-actor-critic: Addressing Sample Inefficiency And Reward Bias In Adversarial Imitation Learning8, 6, 70.82Accept (Poster)
887.00An Analytic Theory Of Generalization Dynamics And Transfer Learning In Deep Linear Networks8, 7, 60.82Accept (Poster)
897.00Feature Intertwiner For Object Detection5, 9, 71.63Accept (Poster)
907.00Learning Neural Pde Solvers With Convergence Guarantees7, 8, 60.82Accept (Poster)
917.00Knowledge Flow: Improve Upon Your Teachers6, 8, 70.82Accept (Poster)
927.00Multilingual Neural Machine Translation With Knowledge Distillation7, 7, 70.00Accept (Poster)
937.00Texttovec: Deep Contextualized Neural Autoregressive Topic Models Of Language With Distributed Compositional Prior7, 8, 60.82Accept (Poster)
947.00Supervised Policy Update For Deep Reinforcement Learning9, 6, 61.41Accept (Poster)
957.00Gansynth: Adversarial Neural Audio Synthesis6, 7, 80.82Accept (Poster)
967.00Lemonade: Learned Motif And Neuronal Assembly Detection In Calcium Imaging Videos8, 5, 81.41Accept (Poster)
977.00The Comparative Power Of Relu Networks And Polynomial Kernels In The Presence Of Sparse Latent Structure7, 7, 70.00Accept (Poster)
987.00Execution-guided Neural Program Synthesis7, 7, 70.00Accept (Poster)
997.00Deterministic Variational Inference For Robust Bayesian Neural Networks7, 7, 70.00Accept (Oral)
1007.00Distributional Concavity Regularization For Gans7, 8, 6, 70.71Accept (Poster)
1017.00Som-vae: Interpretable Discrete Representation Learning On Time Series9, 6, 61.41Accept (Poster)
1027.00Variational Autoencoders With Jointly Optimized Latent Dependency Structure7, 6, 80.82Accept (Poster)
1037.00Learning Sparse Relational Transition Models6, 7, 80.82Accept (Poster)
1047.00Adversarial Domain Adaptation For Stable Brain-machine Interfaces9, 5, 71.63Accept (Poster)
1057.00The Role Of Over-parametrization In Generalization Of Neural Networks7, 7, 70.00Accept (Poster)
1067.00Differentiable Learning-to-normalize Via Switchable Normalization7, 7, 70.00Accept (Poster)
1077.00Stochastic Optimization Of Sorting Networks Via Continuous Relaxations8, 7, 60.82Accept (Poster)
1087.00A Statistical Approach To Assessing Neural Network Robustness6, 7, 80.82Accept (Poster)
1097.00Darts: Differentiable Architecture Search6, 7, 80.82Accept (Poster)
1107.00Learning Concise Representations For Regression By Evolving Networks Of Trees7, 6, 80.82Accept (Poster)
1117.00Padam: Closing The Generalization Gap Of Adaptive Gradient Methods In Training Deep Neural Networks6, 6, 91.41Reject
1127.00A Universal Music Translation Network8, 7, 60.82Accept (Poster)
1137.00Deep Learning 3d Shapes Using Alt-az Anisotropic 2-sphere Convolution6, 8, 70.82Accept (Poster)
1147.00Energy-constrained Compression For Deep Neural Networks Via Weighted Sparse Projection And Layer Input Masking7, 7, 70.00Accept (Poster)
1157.00Deep Graph Infomax9, 5, 71.63Accept (Poster)
1167.00On The Universal Approximability And Complexity Bounds Of Quantized Relu Neural Networks7, 6, 80.82Accept (Poster)
1177.00Global-to-local Memory Pointer Networks For Task-oriented Dialogue8, 8, 51.41Accept (Poster)
1187.00Self-monitoring Navigation Agent Via Auxiliary Progress Estimation8, 6, 70.82Accept (Poster)
1197.00Signsgd Via Zeroth-order Oracle8, 7, 60.82Accept (Poster)
1207.00Learning Particle Dynamics For Manipulating Rigid Bodies, Deformable Objects, And Fluids8, 6, 70.82Accept (Poster)
1217.00Generative Code Modeling With Graphs7, 7, 70.00Accept (Poster)
1227.00The Deep Weight Prior6, 8, 70.82Accept (Poster)
1237.00Bounce And Learn: Modeling Scene Dynamics With Real-world Bounces6, 7, 80.82Accept (Poster)
1247.00Quasi-hyperbolic Momentum And Adam For Deep Learning7, 6, 80.82Accept (Poster)
1257.00Integer Networks For Data Compression With Latent-variable Models6, 7, 80.82Accept (Poster)
1267.00Deep Online Learning Via Meta-learning: Continual Adaptation For Model-based Rl7, 7, 70.00Accept (Poster)
1277.00Are Adversarial Examples Inevitable?7, 8, 60.82Accept (Poster)
1287.00Learning To Screen For Fast Softmax Inference On Large Vocabulary Neural Networks7, 6, 80.82Accept (Poster)
1297.00Information-directed Exploration For Deep Reinforcement Learning7, 7, 70.00Accept (Poster)
1307.00Rotdcf: Decomposition Of Convolutional Filters For Rotation-equivariant Deep Networks7, 7, 70.00Accept (Poster)
1317.00Theoretical Analysis Of Auto Rate-tuning By Batch Normalization7, 7, 70.00Accept (Poster)
1327.00Visual Semantic Navigation Using Scene Priors7, 7, 70.00Accept (Poster)
1337.00Woulda, Coulda, Shoulda: Counterfactually-guided Policy Search7, 7, 70.00Accept (Poster)
1347.00Function Space Particle Optimization For Bayesian Neural Networks7, 7, 70.00Accept (Poster)
1357.00Eidetic 3d Lstm: A Model For Video Prediction And Beyond7, 7, 70.00Accept (Poster)
1367.00Wizard Of Wikipedia: Knowledge-powered Conversational Agents7, 6, 80.82Accept (Poster)
1377.00Meta-learning Probabilistic Inference For Prediction7, 6, 80.82Accept (Poster)
1387.00Don't Settle For Average, Go For The Max: Fuzzy Sets And Max-pooled Word Vectors8, 8, 51.41Accept (Poster)
1397.00Solving The Rubik's Cube With Approximate Policy Iteration7, 7, 70.00Accept (Poster)
1407.00Learning A Meta-solver For Syntax-guided Program Synthesis7, 7, 70.00Accept (Poster)
1417.00Rotate: Knowledge Graph Embedding By Relational Rotation In Complex Space7, 7, 70.00Accept (Poster)
1427.00Generative Question Answering: Learning To Answer The Whole Question7, 6, 80.82Accept (Poster)
1437.00Local Sgd Converges Fast And Communicates Little8, 5, 81.41Accept (Poster)
1447.00Ffjord: Free-form Continuous Dynamics For Scalable Reversible Generative Models7, 7, 70.00Accept (Oral)
1457.00Adashift: Decorrelation And Convergence Of Adaptive Learning Rate Methods6, 6, 91.41Accept (Poster)
1467.00What Do You Learn From Context? Probing For Sentence Structure In Contextualized Word Representations7, 7, 70.00Accept (Poster)
1477.00Modeling Uncertainty With Hedged Instance Embeddings7, 7, 70.00Accept (Poster)
1487.00Learning Implicitly Recurrent Cnns Through Parameter Sharing8, 7, 60.82Accept (Poster)
1497.00Arm: Augment-reinforce-merge Gradient For Stochastic Binary Networks8, 6, 70.82Accept (Poster)
1507.00On The Loss Landscape Of A Class Of Deep Neural Networks With No Bad Local Valleys7, 8, 60.82Accept (Poster)
1517.00Riemannian Adaptive Optimization Methods7, 7, 70.00Accept (Poster)
1527.00Learning To Learn Without Forgetting By Maximizing Transfer And Minimizing Interference6, 8, 70.82Accept (Poster)
1537.00G-sgd: Optimizing Relu Neural Networks In Its Positively Scale-invariant Space7, 7, 70.00Accept (Poster)
1547.00Reasoning About Physical Interactions With Object-oriented Prediction And Planning5, 7, 91.63Accept (Poster)
1557.00Hindsight Policy Gradients7, 7, 70.00Accept (Poster)
1567.00Unsupervised Domain Adaptation For Distance Metric Learning8, 5, 81.41Accept (Poster)
1577.00Learning Mixed-curvature Representations In Product Spaces7, 7, 70.00Accept (Poster)
1587.00Auxiliary Variational Mcmc7, 7, 70.00Accept (Poster)
1597.00Unsupervised Speech Recognition Via Segmental Empirical Output Distribution Matching7, 7, 70.00Accept (Poster)
1607.00On Computation And Generalization Of Generative Adversarial Networks Under Spectrum Control8, 6, 70.82Accept (Poster)
1617.00Optimal Control Via Neural Networks: A Convex Approach6, 8, 70.82Accept (Poster)
1627.00Whitening And Coloring Batch Transform For Gans7, 7, 70.00Accept (Poster)
1637.00Deep, Skinny Neural Networks Are Not Universal Approximators6, 8, 70.82Accept (Poster)
1647.00Nadpex: An On-policy Temporally Consistent Exploration Method For Deep Reinforcement Learning8, 6, 70.82Accept (Poster)
1657.00Learning To Solve Circuit-sat: An Unsupervised Differentiable Approach6, 8, 70.82Accept (Poster)
1667.00A Convergence Analysis Of Gradient Descent For Deep Linear Neural Networks7, 7, 70.00Accept (Poster)
1677.00Learning A Sat Solver From Single-bit Supervision7, 7, 70.00Accept (Poster)
1687.00Generating Multiple Objects At Spatially Distinct Locations6, 8, 70.82Accept (Poster)
1697.00K For The Price Of 1: Parameter-efficient Multi-task And Transfer Learning7, 6, 80.82Accept (Poster)
1707.00Bias-reduced Uncertainty Estimation For Deep Neural Classifiers7, 7, 70.00Accept (Poster)
1717.00Probabilistic Neural-symbolic Models For Interpretable Visual Question Answering8, 6, 70.82Reject
1727.00Representation Degeneration Problem In Training Natural Language Generation Models7, 7, 70.00Accept (Poster)
1737.00Neural Network Gradient-based Learning Of Black-box Function Interfaces7, 7, 70.00Accept (Poster)
1747.00A Data-driven And Distributed Approach To Sparse Signal Representation And Recovery8, 7, 60.82Accept (Poster)
1757.00Relaxed Quantization For Discretized Neural Networks7, 7, 70.00Accept (Poster)
1767.00Invariant And Equivariant Graph Networks8, 4, 92.16Accept (Poster)
1777.00Dyrep: Learning Representations Over Dynamic Graphs6, 7, 80.82Accept (Poster)
1787.00The Laplacian In Rl: Learning Representations With Efficient Approximations7, 7, 70.00Accept (Poster)
1797.00Learning Recurrent Binary/ternary Weights6, 8, 70.82Accept (Poster)
1807.00How Important Is A Neuron7, 7, 70.00Accept (Poster)
1816.80Subgradient Descent Learns Orthogonal Dictionaries7, 7, 7, 7, 60.40Accept (Poster)
1826.75Unsupervised Learning Via Meta-learning7, 6, 8, 60.83Accept (Poster)
1836.75Bayesian Deep Convolutional Networks With Many Channels Are Gaussian Processes7, 7, 7, 60.43Accept (Poster)
1846.75Deterministic Pac-bayesian Generalization Bounds For Deep Networks Via Generalizing Noise-resilience8, 7, 7, 51.09Accept (Poster)
1856.67Structured Adversarial Attack: Towards General Implementation And Better Interpretability7, 7, 60.47Accept (Poster)
1866.67Adaptive Estimators Show Information Compression In Deep Neural Networks7, 6, 70.47Accept (Poster)
1876.67Tree-structured Recurrent Switching Linear Dynamical Systems For Multi-scale Modeling7, 7, 60.47Accept (Poster)
1886.67Residual Non-local Attention Networks For Image Restoration7, 7, 60.47Accept (Poster)
1896.67Cem-rl: Combining Evolutionary And Gradient-based Methods For Policy Search6, 7, 70.47Accept (Poster)
1906.67Marginal Policy Gradients: A Unified Family Of Estimators For Bounded Action Spaces With Applications7, 6, 70.47Accept (Poster)
1916.67Relgan: Relational Generative Adversarial Networks For Text Generation6, 8, 60.94Accept (Poster)
1926.67Defensive Quantization: When Efficiency Meets Robustness7, 6, 70.47Accept (Poster)
1936.67Policy Transfer With Strategy Optimization7, 7, 60.47Accept (Poster)
1946.67Big-little Net: An Efficient Multi-scale Feature Representation For Visual And Speech Recognition7, 6, 70.47Accept (Poster)
1956.67Universal Transformers6, 6, 80.94Accept (Poster)
1966.67Active Learning With Partial Feedback7, 6, 70.47Accept (Poster)
1976.67There Are Many Consistent Explanations Of Unlabeled Data: Why You Should Average6, 8, 60.94Accept (Poster)
1986.67Unsupervised Control Through Non-parametric Discriminative Rewards8, 5, 71.25Accept (Poster)
1996.67On The Convergence Of A Class Of Adam-type Algorithms For Non-convex Optimization7, 7, 60.47Accept (Poster)
2006.67Adaptivity Of Deep Relu Network For Learning In Besov And Mixed Smooth Besov Spaces: Optimal Rate And Curse Of Dimensionality8, 6, 60.94Accept (Poster)
2016.67Predicting The Generalization Gap In Deep Networks With Margin Distributions5, 9, 61.70Accept (Poster)
2026.67A Mean Field Theory Of Batch Normalization7, 6, 70.47Accept (Poster)
2036.67Don't Let Your Discriminator Be Fooled7, 7, 60.47Accept (Poster)
2046.67L-shapley And C-shapley: Efficient Model Interpretation For Structured Data7, 7, 60.47Accept (Poster)
2056.67Hyperbolic Attention Networks6, 7, 70.47Accept (Poster)
2066.67Learning To Make Analogies By Contrasting Abstract Relational Structure6, 7, 70.47Accept (Poster)
2076.67Meta-learning For Stochastic Gradient Mcmc7, 7, 60.47Accept (Poster)
2086.67Directed-info Gail: Learning Hierarchical Policies From Unsegmented Demonstrations Using Directed Information6, 6, 80.94Accept (Poster)
2096.67Building Dynamic Knowledge Graphs From Text Using Machine Reading Comprehension6, 7, 70.47Accept (Poster)
2106.67Proxquant: Quantized Neural Networks Via Proximal Operators8, 7, 51.25Accept (Poster)
2116.67Emergent Coordination Through Competition7, 7, 60.47Accept (Poster)
2126.67Doubly Reparameterized Gradient Estimators For Monte Carlo Objectives7, 7, 60.47Accept (Poster)
2136.67Learning To Understand Goal Specifications By Modelling Reward7, 7, 60.47Accept (Poster)
2146.67Off-policy Evaluation And Learning From Logged Bandit Feedback: Error Reduction Via Surrogate Policy6, 8, 60.94Accept (Poster)
2156.67Improving Mmd-gan Training With Repulsive Loss Function6, 7, 70.47Accept (Poster)
2166.67Probgan: Towards Probabilistic Gan With Theoretical Guarantees6, 5, 91.70Accept (Poster)
2176.67Three Mechanisms Of Weight Decay Regularization6, 7, 70.47Accept (Poster)
2186.67Hierarchical Rl Using An Ensemble Of Proprioceptive Periodic Policies6, 7, 70.47Accept (Poster)
2196.67Detecting Adversarial Examples Via Neural Fingerprinting5, 9, 61.70Reject
2206.67Diversity-sensitive Conditional Generative Adversarial Networks7, 6, 70.47Accept (Poster)
2216.67Optimal Completion Distillation For Sequence Learning7, 7, 60.47Accept (Poster)
2226.67Flowqa: Grasping Flow In History For Conversational Machine Comprehension7, 6, 70.47Accept (Poster)
2236.67Towards The First Adversarially Robust Neural Network Model On Mnist7, 7, 60.47Accept (Poster)
2246.67Sample Efficient Adaptive Text-to-speech7, 7, 60.47Accept (Poster)
2256.67Latent Convolutional Models6, 7, 70.47Accept (Poster)
2266.67Minimal Images In Deep Neural Networks: Fragile Object Recognition In Natural Images7, 7, 60.47Accept (Poster)
2276.67Universal Stagewise Learning For Non-convex Problems With Convergence On Averaged Solutions8, 6, 60.94Accept (Poster)
2286.67Learning Multimodal Graph-to-graph Translation For Molecule Optimization7, 7, 60.47Accept (Poster)
2296.67Autoloss: Learning Discrete Schedule For Alternate Optimization7, 6, 70.47Accept (Poster)
2306.67Efficient Lifelong Learning With A-gem7, 6, 70.47Accept (Poster)
2316.67Spherical Cnns On Unstructured Grids6, 7, 70.47Accept (Poster)
2326.67Differentiable Perturb-and-parse: Semi-supervised Parsing With A Structured Variational Autoencoder8, 7, 51.25Accept (Poster)
2336.67Practical Lossless Compression With Latent Variables Using Bits Back Coding6, 6, 80.94Accept (Poster)
2346.67Analysis Of Quantized Models6, 7, 70.47Accept (Poster)
2356.67Detecting Memorization In Relu Networks5, 6, 91.70Reject
2366.67Snas: Stochastic Neural Architecture Search6, 7, 70.47Accept (Poster)
2376.67Pate-gan: Generating Synthetic Data With Differential Privacy Guarantees7, 6, 70.47Accept (Poster)
2386.67Principled Deep Neural Network Training Through Linear Programming6, 6, 80.94Reject
2396.67Cot: Cooperative Training For Generative Modeling Of Discrete Data7, 7, 60.47Reject
2406.67On The Turing Completeness Of Modern Neural Network Architectures6, 7, 70.47Accept (Poster)
2416.67Layoutgan: Generating Graphic Layouts With Wireframe Discriminators7, 7, 60.47Accept (Poster)
2426.67Learning Factorized Multimodal Representations7, 7, 60.47Accept (Poster)
2436.67Phase-aware Speech Enhancement With Deep Complex U-net6, 7, 70.47Accept (Poster)
2446.67Go Gradient For Expectation-based Objectives7, 7, 60.47Accept (Poster)
2456.67Analyzing Inverse Problems With Invertible Neural Networks7, 6, 70.47Accept (Poster)
2466.67Deep Reinforcement Learning With Relational Inductive Biases6, 7, 70.47Accept (Poster)
2476.67Janossy Pooling: Learning Deep Permutation-invariant Functions For Variable-size Inputs7, 5, 81.25Accept (Poster)
2486.67Improving Generalization And Stability Of Generative Adversarial Networks7, 7, 60.47Accept (Poster)
2496.67Preconditioner On Matrix Lie Group For Sgd8, 5, 71.25Accept (Poster)
2506.67Deep Anomaly Detection With Outlier Exposure6, 6, 80.94Accept (Poster)
2516.67Attention, Learn To Solve Routing Problems!7, 6, 70.47Accept (Poster)
2526.67Learning What And Where To Attend6, 6, 80.94Accept (Poster)
2536.67Query-efficient Hard-label Black-box Attack: An Optimization-based Approach7, 6, 70.47Accept (Poster)
2546.67Recall Traces: Backtracking Models For Efficient Reinforcement Learning7, 7, 60.47Accept (Poster)
2556.67Learning To Infer And Execute 3d Shape Programs6, 7, 70.47Accept (Poster)
2566.67Dom-q-net: Grounded Rl On Structured Language7, 7, 60.47Accept (Poster)
2576.67Toward Understanding The Impact Of Staleness In Distributed Machine Learning4, 9, 72.05Accept (Poster)
2586.67Graph Hypernetworks For Neural Architecture Search7, 6, 70.47Accept (Poster)
2596.67A Generative Model For Electron Paths8, 4, 81.89Accept (Poster)
2606.67Bayesian Prediction Of Future Street Scenes Using Synthetic Likelihoods6, 8, 60.94Accept (Poster)
2616.67Disjoint Mapping Network For Cross-modal Matching Of Voices And Faces7, 6, 70.47Accept (Poster)
2626.67Complement Objective Training5, 8, 71.25Accept (Poster)
2636.67Value Propagation Networks7, 6, 70.47Accept (Poster)
2646.67Trellis Networks For Sequence Modeling7, 6, 70.47Accept (Poster)
2656.67Non-vacuous Generalization Bounds At The Imagenet Scale: A Pac-bayesian Compression Approach6, 6, 80.94Accept (Poster)
2666.67Contingency-aware Exploration In Reinforcement Learning6, 7, 70.47Accept (Poster)
2676.67Context-adaptive Entropy Model For End-to-end Optimized Image Compression7, 7, 60.47Accept (Poster)
2686.67Learning Finite State Representations Of Recurrent Policy Networks6, 7, 70.47Accept (Poster)
2696.67Do Deep Generative Models Know What They Don't Know?7, 6, 70.47Accept (Poster)
2706.67Learning Two-layer Neural Networks With Symmetric Inputs7, 6, 70.47Accept (Poster)
2716.67Minimal Random Code Learning: Getting Bits Back From Compressed Model Parameters7, 6, 70.47Accept (Poster)
2726.67Noodl: Provable Online Dictionary Learning And Sparse Coding7, 6, 70.47Accept (Poster)
2736.67Approximating Cnns With Bag-of-local-features Models Works Surprisingly Well On Imagenet6, 7, 70.47Accept (Poster)
2746.67Understanding Straight-through Estimator In Training Activation Quantized Neural Nets7, 7, 60.47Accept (Poster)
2756.67Antisymmetricrnn: A Dynamical System View On Recurrent Neural Networks7, 7, 60.47Accept (Poster)
2766.67The Limitations Of Adversarial Training And The Blind-spot Attack7, 7, 60.47Accept (Poster)
2776.67A Rotation-equivariant Convolutional Neural Network Model Of Primary Visual Cortex7, 5, 81.25Accept (Poster)
2786.67Generalized Tensor Models For Recurrent Neural Networks6, 7, 70.47Accept (Poster)
2796.67Adversarial Attacks On Graph Neural Networks Via Meta Learning7, 7, 60.47Accept (Poster)
2806.67Training For Faster Adversarial Robustness Verification Via Inducing Relu Stability8, 7, 51.25Accept (Poster)
2816.67Adv-bnn: Improved Adversarial Defense Through Robust Bayesian Neural Network7, 6, 70.47Accept (Poster)
2826.67Initialized Equilibrium Propagation For Backprop-free Training5, 8, 71.25Accept (Poster)
2836.67Learning To Design Rna6, 6, 80.94Accept (Poster)
2846.67Adef: An Iterative Algorithm To Construct Adversarial Deformations7, 7, 60.47Accept (Poster)
2856.67Stable Opponent Shaping In Differentiable Games8, 6, 60.94Accept (Poster)
2866.67Spigan: Privileged Adversarial Learning From Simulation6, 7, 70.47Accept (Poster)
2876.67Metropolis-hastings View On Variational Inference And Adversarial Training5, 6, 91.70Reject
2886.67Beyond Pixel Norm-balls: Parametric Adversaries Using An Analytically Differentiable Renderer7, 7, 60.47Accept (Poster)
2896.67Adaptive Posterior Learning: Few-shot Learning With A Surprise-based Memory Module6, 7, 70.47Accept (Poster)
2906.67Glue: A Multi-task Benchmark And Analysis Platform For Natural Language Understanding7, 5, 81.25Accept (Poster)
2916.67Looking For Elmo's Friends: Sentence-level Pretraining Beyond Language Modeling5, 7, 81.25Reject
2926.67Misgan: Learning From Incomplete Data With Generative Adversarial Networks7, 6, 70.47Accept (Poster)
2936.50Gradient Descent Provably Optimizes Over-parameterized Neural Networks3, 8, 8, 72.06Accept (Poster)
2946.50Relational Forward Models For Multi-agent Learning7, 6, 7, 60.50Accept (Poster)
2956.50Dynamic Channel Pruning: Feature Boosting And Suppression7, 6, 7, 60.50Accept (Poster)
2966.50Learning Protein Structure With A Differentiable Simulator6, 7, 7, 60.50Accept (Oral)
2976.50Preferences Implicit In The State Of The World6, 7, 6, 70.50Accept (Poster)
2986.50Peernets: Exploiting Peer Wisdom Against Adversarial Attacks7, 60.50Accept (Poster)
2996.33Multilingual Neural Machine Translation With Soft Decoupled Encoding6, 6, 70.47Accept (Poster)
3006.33Analysing Mathematical Reasoning Abilities Of Neural Models7, 6, 60.47Accept (Poster)
3016.33Minimum Divergence Vs. Maximum Margin: An Empirical Comparison On Seq2seq Models5, 7, 70.94Accept (Poster)
3026.33Self-tuning Networks: Bilevel Optimization Of Hyperparameters Using Structured Best-response Functions7, 6, 60.47Accept (Poster)
3036.33Learning Disentangled Representations With Reference-based Variational Autoencoders7, 6, 60.47Reject
3046.33Remember And Forget For Experience Replay7, 6, 60.47Reject
3056.33Dpsnet: End-to-end Deep Plane Sweep Stereo7, 6, 60.47Accept (Poster)
3066.33On Tighter Generalization Bounds For Deep Neural Networks: Cnns, Resnets, And Beyond5, 7, 70.94Reject
3076.33Measuring Compositionality In Representation Learning6, 6, 70.47Accept (Poster)
3086.33Reward Constrained Policy Optimization6, 7, 60.47Accept (Poster)
3096.33Regularized Learning For Domain Adaptation Under Label Shifts7, 6, 60.47Accept (Poster)
3106.33A Differentiable Self-disambiguated Sense Embedding Model Via Scaled Gumbel Softmax7, 6, 60.47Reject
3116.33Preventing Posterior Collapse With Delta-vaes6, 7, 60.47Accept (Poster)
3126.33Efficient Augmentation Via Data Subsampling6, 7, 60.47Accept (Poster)
3136.33Double Viterbi: Weight Encoding For High Compression Ratio And Fast On-chip Reconstruction For Deep Neural Network6, 6, 70.47Accept (Poster)
3146.33Rethinking The Value Of Network Pruning6, 6, 70.47Accept (Poster)
3156.33Aligning Artificial Neural Networks To The Brain Yields Shallow Recurrent Architectures5, 7, 70.94Reject
3166.33Equi-normalization Of Neural Networks7, 7, 50.94Accept (Poster)
3176.33Multi-domain Adversarial Learning5, 8, 61.25Accept (Poster)
3186.33Information Theoretic Lower Bounds On Negative Log Likelihood6, 7, 60.47Accept (Poster)
3196.33Dialogwae: Multimodal Response Generation With Conditional Wasserstein Auto-encoder7, 7, 50.94Accept (Poster)
3206.33Monge-amp`ere Flow For Generative Modeling7, 6, 60.47Reject
3216.33Nlprolog: Reasoning With Weak Unification For Natural Language Question Answering7, 5, 70.94Reject
3226.33Attentive Neural Processes6, 6, 70.47Accept (Poster)
3236.33Scalable Unbalanced Optimal Transport Using Generative Adversarial Networks6, 7, 60.47Accept (Poster)
3246.33Structured Neural Summarization6, 6, 70.47Accept (Poster)
3256.33Laplacian Networks: Bounding Indicator Function Smoothness For Neural Networks Robustness9, 5, 51.89Reject
3266.33Accumulation Bit-width Scaling For Ultra-low Precision Training Of Deep Networks6, 6, 70.47Accept (Poster)
3276.33Direct Optimization Through For Discrete Variational Auto-encoder7, 7, 50.94Reject
3286.33Fluctuation-dissipation Relations For Stochastic Gradient Descent8, 5, 61.25Accept (Poster)
3296.33Rnns Implicitly Implement Tensor-product Representations7, 6, 60.47Accept (Poster)
3306.33From Hard To Soft: Understanding Deep Network Nonlinearities Via Vector Quantization And Statistical Inference6, 6, 70.47Accept (Poster)
3316.33Von Mises-fisher Loss For Training Sequence To Sequence Models With Continuous Outputs6, 7, 60.47Accept (Poster)
3326.33Proxylessnas: Direct Neural Architecture Search On Target Task And Hardware6, 6, 70.47Accept (Poster)
3336.33Discriminator Rejection Sampling7, 6, 60.47Accept (Poster)
3346.33Visceral Machines: Risk-aversion In Reinforcement Learning With Intrinsic Physiological Rewards6, 6, 70.47Accept (Poster)
3356.33Fixup Initialization: Residual Learning Without Normalization7, 5, 70.94Accept (Poster)
3366.33Algorithmic Framework For Model-based Deep Reinforcement Learning With Theoretical Guarantees7, 6, 60.47Accept (Poster)
3376.33Understanding Composition Of Word Embeddings Via Tensor Decomposition7, 6, 60.47Accept (Poster)
3386.33Learning To Simulate6, 6, 70.47Accept (Poster)
3396.33Temporal Gaussian Mixture Layer For Videos6, 6, 70.47Reject
3406.33Dher: Hindsight Experience Replay For Dynamic Goals6, 7, 60.47Accept (Poster)
3416.33L2-nonexpansive Neural Networks8, 6, 51.25Accept (Poster)
3426.33Generating Liquid Simulations With Deformation-aware Neural Networks7, 7, 50.94Accept (Poster)
3436.33Camou: Learning Physical Vehicle Camouflages To Adversarially Attack Detectors In The Wild4, 8, 71.70Accept (Poster)
3446.33Timbretron: A Wavenet(cyclegan(cqt(audio))) Pipeline For Musical Timbre Transfer4, 7, 81.70Accept (Poster)
3456.33Synthetic Datasets For Neural Program Synthesis7, 6, 60.47Accept (Poster)
3466.33Delta: Deep Learning Transfer Using Feature Map With Attention For Convolutional Networks7, 6, 60.47Accept (Poster)
3476.33Neural Speed Reading With Structural-jump-lstm7, 5, 70.94Accept (Poster)
3486.33Policy Generalization In Capacity-limited Reinforcement Learning7, 7, 50.94Reject
3496.33Large Scale Graph Learning From Smooth Signals7, 5, 70.94Accept (Poster)
3506.33Post Selection Inference With Incomplete Maximum Mean Discrepancy Estimator6, 5, 81.25Accept (Poster)
3516.33Stable Recurrent Models7, 6, 60.47Accept (Poster)
3526.33On The Relation Between The Sharpest Directions Of Dnn Loss And The Sgd Step Length6, 6, 70.47Accept (Poster)
3536.33Learning To Represent Edits7, 6, 60.47Accept (Poster)
3546.33On Self Modulation For Generative Adversarial Networks7, 5, 70.94Accept (Poster)
3556.33Sgd Converges To Global Minimum In Deep Learning Via Star-convex Path6, 5, 81.25Accept (Poster)
3566.33Neural Graph Evolution: Towards Efficient Automatic Robot Design5, 8, 61.25Accept (Poster)
3576.33The Relativistic Discriminator: A Key Element Missing From Standard Gan6, 6, 70.47Accept (Poster)
3586.33Augmented Cyclic Adversarial Learning For Low Resource Domain Adaptation8, 6, 51.25Accept (Poster)
3596.33Seq2slate: Re-ranking And Slate Optimization With Rnns6, 6, 70.47Reject
3606.33A Novel Variational Family For Hidden Non-linear Markov Models5, 8, 61.25Reject
3616.33Hierarchical Visuomotor Control Of Humanoids5, 8, 61.25Accept (Poster)
3626.33Single Shot Neural Architecture Search Via Direct Sparse Optimization6, 6, 70.47Reject
3636.33Beyond Greedy Ranking: Slate Optimization Via List-cvae6, 6, 70.47Accept (Poster)
3646.33Local Critic Training Of Deep Neural Networks6, 6, 70.47Reject
3656.33On The Sensitivity Of Adversarial Robustness To Input Data Distributions7, 5, 70.94Accept (Poster)
3666.33A Rotation And A Translation Suffice: Fooling Cnns With Simple Transformations8, 6, 51.25Reject
3676.33Verification Of Non-linear Specifications For Neural Networks7, 5, 70.94Accept (Poster)
3686.33Visual Reasoning By Progressive Module Networks6, 7, 60.47Accept (Poster)
3696.33Hierarchical Interpretations For Neural Network Predictions7, 6, 60.47Accept (Poster)
3706.33Robust Estimation Via Generative Adversarial Networks7, 5, 70.94Accept (Poster)
3716.33Large-scale Answerer In Questioner's Mind For Visual Dialog Question Generation6, 6, 70.47Accept (Poster)
3726.33Stochastic Gradient Descent Learns State Equations With Nonlinear Activations7, 5, 70.94Reject
3736.33Selfless Sequential Learning7, 6, 60.47Accept (Poster)
3746.33Mae: Mutual Posterior-divergence Regularization For Variational Autoencoders7, 6, 60.47Accept (Poster)
3756.33Information Asymmetry In Kl-regularized Rl7, 5, 70.94Accept (Poster)
3766.33Poincare Glove: Hyperbolic Word Embeddings6, 6, 70.47Accept (Poster)
3776.33From Language To Goals: Inverse Reinforcement Learning For Vision-based Instruction Following5, 5, 91.89Accept (Poster)
3786.33Dynamically Unfolding Recurrent Restorer: A Moving Endpoint Control Method For Image Restoration6, 6, 70.47Accept (Poster)
3796.33Soft Q-learning With Mutual-information Regularization7, 6, 60.47Accept (Poster)
3806.33M^3rl: Mind-aware Multi-agent Management Reinforcement Learning7, 6, 60.47Accept (Poster)
3816.33Invariance And Inverse Stability Under Relu6, 6, 70.47Reject
3826.33Diversity And Depth In Per-example Routing Models7, 6, 60.47Accept (Poster)
3836.33Revealing Interpretable Object Representations From Human Behavior7, 7, 50.94Accept (Poster)
3846.33Learning Factorized Representations For Open-set Domain Adaptation6, 6, 70.47Accept (Poster)
3856.33Functional Variational Bayesian Neural Networks7, 6, 60.47Accept (Poster)
3866.33Emi: Exploration With Mutual Information Maximizing State And Action Embeddings5, 7, 70.94Reject
3876.33Modeling The Long Term Future In Model-based Reinforcement Learning6, 6, 70.47Accept (Poster)
3886.33Deepobs: A Deep Learning Optimizer Benchmark Suite6, 6, 70.47Accept (Poster)
3896.33Empirical Bounds On Linear Regions Of Deep Rectifier Networks6, 7, 60.47Reject
3906.33Signsgd With Majority Vote Is Communication Efficient And Fault Tolerant6, 6, 70.47Accept (Poster)
3916.33Babyai: A Platform To Study The Sample Efficiency Of Grounded Language Learning6, 7, 60.47Accept (Poster)
3926.33Excessive Invariance Causes Adversarial Vulnerability7, 6, 60.47Accept (Poster)
3936.33Overcoming The Disentanglement Vs Reconstruction Trade-off Via Jacobian Supervision7, 7, 50.94Accept (Poster)
3946.33Feature-wise Bias Amplification6, 7, 60.47Accept (Poster)
3956.33Why Do Deep Convolutional Networks Generalize So Poorly To Small Image Transformations?7, 7, 50.94Reject
3966.33Hierarchical Generative Modeling For Controllable Speech Synthesis8, 6, 51.25Accept (Poster)
3976.33Multi-step Retriever-reader Interaction For Scalable Open-domain Question Answering6, 6, 70.47Accept (Poster)
3986.33Improved Gradient Estimators For Stochastic Discrete Variables7, 6, 60.47Reject
3996.33Characterizing Audio Adversarial Examples Using Temporal Dependency6, 6, 70.47Accept (Poster)
4006.33Data-dependent Coresets For Compressing Neural Networks With Applications To Generalization Bounds6, 7, 60.47Accept (Poster)
4016.33Meta-learning With Latent Embedding Optimization6, 5, 81.25Accept (Poster)
4026.33Probabilistic Planning With Sequential Monte Carlo Methods8, 6, 51.25Accept (Poster)
4036.33Learning What You Can Do Before Doing Anything7, 6, 60.47Accept (Poster)
4046.33Model-predictive Policy Learning With Uncertainty Regularization For Driving In Dense Traffic6, 6, 70.47Accept (Poster)
4056.33Spreading Vectors For Similarity Search6, 7, 60.47Accept (Poster)
4066.33Learning When To Communicate At Scale In Multiagent Cooperative And Competitive Tasks7, 6, 60.47Accept (Poster)
4076.33Opportunistic Learning: Budgeted Cost-sensitive Learning From Data Streams6, 6, 70.47Accept (Poster)
4086.33The Singular Values Of Convolutional Layers8, 4, 71.70Accept (Poster)
4096.33Exemplar Guided Unsupervised Image-to-image Translation With Semantic Consistency6, 5, 81.25Accept (Poster)
4106.33Learning-based Frequency Estimation Algorithms7, 6, 60.47Accept (Poster)
4116.33Max-mig: An Information Theoretic Approach For Joint Learning From Crowds6, 6, 70.47Accept (Poster)
4126.33Multiple-attribute Text Rewriting7, 6, 60.47Accept (Poster)
4136.33Harmonizing Maximum Likelihood With Gans For Multimodal Conditional Generation8, 7, 41.70Accept (Poster)
4146.33Variational Autoencoder With Arbitrary Conditioning7, 6, 60.47Accept (Poster)
4156.33A New Dog Learns Old Tricks: Rl Finds Classic Optimization Algorithms6, 6, 70.47Accept (Poster)
4166.33Generating Multi-agent Trajectories Using Programmatic Weak Supervision7, 6, 60.47Accept (Poster)
4176.25Maximal Divergence Sequential Autoencoder For Binary Software Vulnerability Detection6, 7, 6, 60.43Accept (Poster)
4186.25Neural Tts Stylization With Adversarial And Collaborative Games6, 6, 6, 70.43Accept (Poster)
4196.25Competitive Experience Replay5, 7, 6, 70.83Accept (Poster)
4206.25Bayesian Policy Optimization For Model Uncertainty5, 6, 7, 70.83Accept (Poster)
4216.25Sinkhorn Autoencoders5, 6, 7, 70.83Reject
4226.25Two-timescale Networks For Nonlinear Value Function Approximation6, 7, 6, 60.43Accept (Poster)
4236.25Lyapunov-based Safe Policy Optimization6, 6, 8, 51.09Reject
4246.25Towards Consistent Performance On Atari Using Expert Demonstrations6, 5, 7, 70.83Reject
4256.00Learning Implicit Generative Models By Teaching Explicit Ones7, 5, 60.82Reject
4266.00Emerging Disentanglement In Auto-encoder Based Unsupervised Image Content Transfer6, 6, 60.00Accept (Poster)
4276.00Projective Subspace Networks For Few-shot Learning6, 6, 60.00Reject
4286.00Environment Probing Interaction Policies6, 6, 60.00Accept (Poster)
4296.00Stcn: Stochastic Temporal Convolutional Networks6, 6, 60.00Accept (Poster)
4306.00Capsule Graph Neural Network6, 6, 60.00Accept (Poster)
4316.00Top-down Neural Model For Formulae6, 6, 60.00Accept (Poster)
4326.00Tarmac: Targeted Multi-agent Communication6, 6, 60.00Reject
4336.00Coarse-grain Fine-grain Coattention Network For Multi-evidence Question Answering7, 7, 41.41Accept (Poster)
4346.00Learning Programmatically Structured Representations With Perceptor Gradients7, 6, 50.82Accept (Poster)
4356.00Graph Transformer6, 6, 60.00Reject
4366.00Feed-forward Propagation In Probabilistic Neural Networks With Categorical And Max Layers6, 6, 60.00Accept (Poster)
4376.00Discriminative Active Learning8, 6, 41.63Reject
4386.00Neural Logic Machines6, 7, 50.82Accept (Poster)
4396.00Improving Sequence-to-sequence Learning Via Optimal Transport6, 7, 50.82Accept (Poster)
4406.00Backpropamine: Training Self-modifying Neural Networks With Differentiable Neuromodulated Plasticity4, 9, 52.16Accept (Poster)
4416.00Learning To Propagate Labels: Transductive Propagation Network For Few-shot Learning5, 6, 70.82Accept (Poster)
4426.00Neural Mmo: A Massively Multiplayer Game Environment For Intelligent Agents6, 5, 70.82Reject
4436.00Learnable Embedding Space For Efficient Neural Architecture Compression5, 7, 60.82Accept (Poster)
4446.00Ib-gan: Disentangled Representation Learning With Information Bottleneck Gan7, 7, 41.41Reject
4456.00Interpolation-prediction Networks For Irregularly Sampled Time Series6, 6, 60.00Accept (Poster)
4466.00Learning Models For Visual 3d Localization With Implicit Mapping7, 5, 60.82Reject
4476.00Transfer Learning For Related Reinforcement Learning Tasks Via Image-to-image Translation7, 7, 41.41Reject
4486.00Countering Language Drift Via Grounding6, 6, 60.00Reject
4496.00H-detach: Modifying The Lstm Gradient Towards Better Optimization5, 6, 70.82Accept (Poster)
4506.00Rigorous Agent Evaluation: An Adversarial Approach To Uncover Catastrophic Failures6, 6, 60.00Accept (Poster)
4516.00Multi-class Classification Without Multi-class Labels6, 7, 50.82Accept (Poster)
4526.00Dadam: A Consensus-based Distributed Adaptive Gradient Method For Online Optimization8, 4, 61.63Reject
4536.00A Biologically Inspired Visual Working Memory For Deep Networks4, 5, 92.16Reject
4546.00Multi-agent Dual Learning6, 6, 60.00Accept (Poster)
4556.00Dirichlet Variational Autoencoder6, 5, 70.82Reject
4566.00Graph Convolutional Network With Sequential Attention For Goal-oriented Dialogue Systems5, 6, 70.82Reject
4576.00Unsupervised Neural Multi-document Abstractive Summarization Of Reviews5, 4, 92.16Reject
4586.00Semi-supervised Learning With Multi-domain Sentiment Word Embeddings6, 6, 60.00Reject
4596.00Guiding Policies With Language Via Meta-learning6, 6, 60.00Accept (Poster)
4606.00Improving Sentence Representations With Multi-view Frameworks7, 6, 50.82Reject
4616.00Estimating Information Flow In Dnns7, 7, 41.41Reject
4626.00Identifying Bias In Ai Using Simulation5, 7, 60.82Reject
4636.00Graph Wavelet Neural Network4, 7, 71.41Accept (Poster)
4646.00Recurrent Kalman Networks: Factorized Inference In High-dimensional Deep Feature Spaces6, 6, 60.00Reject
4656.00Learning Procedural Abstractions And Evaluating Discrete Latent Temporal Structure6, 5, 70.82Accept (Poster)
4666.00Adversarial Information Factorization6, 6, 60.00Reject
4676.00Bnn+: Improved Binary Network Training8, 6, 41.63Reject
4686.00An Empirical Study Of Binary Neural Networks' Optimisation8, 6, 41.63Accept (Poster)
4696.00Graph U-net7, 4, 71.41Reject
4706.00Distribution-interpolation Trade Off In Generative Models6, 7, 50.82Accept (Poster)
4716.00A Closer Look At Few-shot Classification6, 6, 60.00Accept (Poster)
4726.00Decoupled Weight Decay Regularization6, 7, 50.82Accept (Poster)
4736.00An Adaptive Homeostatic Algorithm For The Unsupervised Learning Of Visual Features5, 4, 92.16Reject
4746.00Efficient Two-step Adversarial Defense For Deep Neural Networks5, 6, 70.82Reject
4756.00Cramer-wold Autoencoder5, 7, 60.82Reject
4766.00Precision Highway For Ultra Low-precision Quantization6, 7, 50.82Reject
4776.00Graphseq2seq: Graph-sequence-to-sequence For Neural Machine Translation6, 6, 60.00Reject
4786.00Learning Multi-level Hierarchies With Hindsight6, 7, 50.82Accept (Poster)
4796.00The Variational Deficiency Bottleneck5, 7, 60.82Reject
4806.00Universal Successor Features Approximators7, 5, 60.82Accept (Poster)
4816.00Deep Lagrangian Networks: Using Physics As Model Prior For Deep Learning7, 4, 71.41Accept (Poster)
4826.00Neural Program Repair By Jointly Learning To Localize And Repair6, 7, 50.82Accept (Poster)
4836.00Measuring And Regularizing Networks In Function Space6, 6, 60.00Accept (Poster)
4846.00Anytime Minibatch: Exploiting Stragglers In Online Distributed Optimization4, 7, 71.41Accept (Poster)
4856.00Stochastic Gradient Push For Distributed Deep Learning6, 6, 60.00Reject
4866.00A Direct Approach To Robust Deep Learning Using Adversarial Networks5, 7, 60.82Accept (Poster)
4876.00Gamepad: A Learning Environment For Theorem Proving4, 7, 71.41Accept (Poster)
4886.00Don’t Judge A Book By Its Cover - On The Dynamics Of Recurrent Neural Networks5, 7, 60.82Reject
4896.00Uncovering Surprising Behaviors In Reinforcement Learning Via Worst-case Analysis5, 7, 60.82Reject
4906.00Language Model Pre-training For Hierarchical Document Representations6, 6, 60.00Reject
4916.00Manifold Mixup: Learning Better Representations By Interpolating Hidden States6, 4, 81.63Reject
4926.00Dimension-free Bounds For Low-precision Training6, 6, 60.00Reject
4936.00Kernel Rnn Learning (kernl)5, 7, 60.82Accept (Poster)
4946.00Datnet: Dual Adversarial Transfer For Low-resource Named Entity Recognition6, 6, 60.00Reject
4956.00Optimistic Mirror Descent In Saddle-point Problems: Going The Extra (gradient) Mile7, 6, 50.82Accept (Poster)
4966.00Deep Convolutional Networks As Shallow Gaussian Processes5, 8, 51.41Accept (Poster)
4976.00On The Computational Inefficiency Of Large Batch Sizes For Stochastic Gradient Descent5, 8, 51.41Reject
4986.00Wasserstein Barycenter Model Ensembling6, 6, 60.00Accept (Poster)
4996.00Computing Committor Functions For The Study Of Rare Events Using Deep Learning With Importance Sampling6, 6, 5, 70.71Reject
5006.00Scaling Shared Model Governance Via Model Splitting4, 5, 92.16Reject
5016.00Generative Feature Matching Networks6, 6, 6, 60.00Reject
5026.00Mixed Precision Quantization Of Convnets Via Differentiable Neural Architecture Search5, 6, 7, 60.71Reject
5036.00Alignment Based Mathching Networks For One-shot Classification And Open-set Recognition7, 6, 7, 41.22Reject
5046.00Unsupervised Adversarial Image Reconstruction6, 8, 41.63Accept (Poster)
5056.00Adversarial Reprogramming Of Neural Networks4, 6, 81.63Accept (Poster)
5066.00Reinforcement Learning With Perturbed Rewards6, 6, 60.00Reject
5076.00Variational Bayesian Phylogenetic Inference6, 5, 70.82Accept (Poster)
5086.00Efficient Multi-objective Neural Architecture Search Via Lamarckian Evolution6, 6, 60.00Accept (Poster)
5096.00On-policy Trust Region Policy Optimisation With Replay Buffers7, 6, 50.82Reject
5106.00A Max-affine Spline Perspective Of Recurrent Neural Networks6, 6, 60.00Accept (Poster)
5116.00Explicit Information Placement On Latent Variables Using Auxiliary Generative Modelling Task6, 7, 50.82Reject
5126.00Code2seq: Generating Sequences From Structured Representations Of Code6, 7, 50.82Accept (Poster)
5136.00Overcoming Catastrophic Forgetting For Continual Learning Via Model Adaptation5, 6, 70.82Accept (Poster)
5146.00Dl2: Training And Querying Neural Networks With Logic7, 5, 60.82Reject
5156.00Cost-sensitive Robustness Against Adversarial Examples5, 5, 81.41Accept (Poster)
5166.00Robust Conditional Generative Adversarial Networks6, 6, 60.00Accept (Poster)
5176.00Unsupervised Discovery Of Parts, Structure, And Dynamics6, 6, 7, 50.71Accept (Poster)
5186.00Learning To Learn With Conditional Class Dependencies6, 8, 41.63Accept (Poster)
5196.00Aggregated Momentum: Stability Through Passive Damping7, 6, 50.82Accept (Poster)
5206.00Discovery Of Natural Language Concepts In Individual Units Of Cnns6, 6, 60.00Accept (Poster)
5216.00Generative Predecessor Models For Sample-efficient Imitation Learning6, 5, 70.82Accept (Poster)
5226.00Image Deformation Meta-network For One-shot Learning5, 7, 60.82N/A
5236.00Adversarial Vulnerability Of Neural Networks Increases With Input Dimension6, 4, 9, 51.87Reject
5246.00How To Train Your Maml5, 6, 70.82Accept (Poster)
5256.00Learning Kolmogorov Models For Binary Random Variables5, 5, 81.41Reject
5266.00Unsupervised Hyper-alignment For Multilingual Word Embeddings5, 6, 70.82Accept (Poster)
5276.00Adversarial Imitation Via Variational Inverse Reinforcement Learning6, 6, 60.00Accept (Poster)
5286.00Improving The Generalization Of Adversarial Training With Domain Adaptation6, 6, 60.00Accept (Poster)
5296.00Formal Limitations On The Measurement Of Mutual Information8, 6, 41.63Reject
5306.00Online Hyperparameter Adaptation Via Amortized Proximal Optimization6, 5, 70.82Reject
5316.00Machine Translation With Weakly Paired Bilingual Documents6, 5, 70.82Reject
5326.00Greedy Attack And Gumbel Attack: Generating Adversarial Examples For Discrete Data3, 6, 8, 71.87Reject
5336.00Variance Networks: When Expectation Does Not Meet Your Expectations6, 6, 60.00Accept (Poster)
5346.00Shallow Learning For Deep Networks6, 5, 70.82Reject
5356.00Success At Any Cost: Value Constrained Model-free Continuous Control7, 5, 60.82Reject
5366.00Language Modeling Teaches You More Syntax Than Translation Does: Lessons Learned Through Auxiliary Task Analysis6, 5, 70.82Reject
5376.00Hierarchical Reinforcement Learning Via Advantage-weighted Information Maximization5, 6, 70.82Accept (Poster)
5386.00Mean-field Analysis Of Batch Normalization7, 6, 50.82Reject
5396.00Learning From Positive And Unlabeled Data With A Selection Bias7, 6, 50.82Accept (Poster)
5406.00A Kernel Random Matrix-based Approach For Sparse Pca5, 7, 60.82Accept (Poster)
5416.00Per-tensor Fixed-point Quantization Of The Back-propagation Algorithm7, 3, 82.16Accept (Poster)
5426.00Fortified Networks: Improving The Robustness Of Deep Networks By Modeling The Manifold Of Hidden Representations4, 5, 9, 61.87Reject
5436.00A Comprehensive, Application-oriented Study Of Catastrophic Forgetting In Dnns5, 6, 70.82Accept (Poster)
5446.00Interactive Agent Modeling By Learning To Probe6, 6, 6, 60.00Reject
5456.00Learning Heuristics For Automated Reasoning Through Reinforcement Learning5, 6, 70.82Reject
5466.00Stochastic Prediction Of Multi-agent Interactions From Partial Observations6, 6, 60.00Accept (Poster)
5476.00Combinatorial Attacks On Binarized Neural Networks5, 6, 70.82Accept (Poster)
5486.00Invase: Instance-wise Variable Selection Using Neural Networks6, 6, 60.00Accept (Poster)
5495.75On The Margin Theory Of Feedforward Neural Networks5, 5, 6, 70.83Reject
5505.75Neural Networks For Modeling Source Code Edits5, 6, 6, 60.43Reject
5515.75Efficiently Testing Local Optimality And Escaping Saddles For Relu Networks3, 6, 6, 81.79Accept (Poster)
5525.75Automata Guided Skill Composition7, 5, 6, 50.83Reject
5535.67A More Globally Accurate Dimensionality Reduction Method Using Triplets6, 5, 60.47Reject
5545.67Eddi: Efficient Dynamic Discovery Of High-value Information With Partial Vae6, 5, 60.47Reject
5555.67Deep Imitative Models For Flexible Inference, Planning, And Control5, 6, 60.47Reject
5565.67Set Transformer5, 6, 60.47Reject
5575.67Transfer Learning Via Unsupervised Task Discovery For Visual Question Answering4, 5, 81.70N/A
5585.67Information Regularized Neural Networks6, 6, 50.47Reject
5595.67An Information-theoretic Metric Of Transferability For Task Transfer Learning5, 6, 60.47Reject
5605.67Detecting Out-of-distribution Samples Using Low-order Deep Features Statistics5, 5, 70.94Reject
5615.67Laplacian Smoothing Gradient Descent6, 6, 50.47Reject
5625.67Cross-task Knowledge Transfer For Visually-grounded Navigation7, 5, 50.94Reject
5635.67Super-resolution Via Conditional Implicit Maximum Likelihood Estimation5, 6, 60.47Reject
5645.67Mode Normalization5, 6, 60.47Accept (Poster)
5655.67Learning Cross-lingual Sentence Representations Via A Multi-task Dual-encoder Model7, 4, 61.25Reject
5665.67Ppo-cma: Proximal Policy Optimization With Covariance Matrix Adaptation4, 9, 42.36Reject
5675.67A Resizable Mini-batch Gradient Descent Based On A Multi-armed Bandit6, 7, 41.25Reject
5685.67Understanding Gans Via Generalization Analysis For Disconnected Support6, 5, 60.47Reject
5695.67Open-ended Content-style Recombination Via Leakage Filtering7, 5, 50.94Reject
5705.67Adversarial Audio Synthesis5, 6, 60.47Accept (Poster)
5715.67A Variational Dirichlet Framework For Out-of-distribution Detection6, 5, 60.47Reject
5725.67Stochastic Adversarial Video Prediction6, 6, 50.47Reject
5735.67Transfer Learning For Sequences Via Learning To Collocate6, 5, 60.47Accept (Poster)
5745.67Talk The Walk: Navigating Grids In New York City Through Grounded Dialogue6, 7, 41.25Reject
5755.67Random Mesh Projectors For Inverse Problems6, 7, 41.25Accept (Poster)
5765.67Infobot: Transfer And Exploration Via The Information Bottleneck7, 7, 31.89Accept (Poster)
5775.67Trace-back Along Capsules And Its Application On Semantic Segmentation6, 6, 50.47Reject
5785.67Adversarially Learned Mixture Model6, 5, 60.47Reject
5795.67Unsupervised Document Representation Using Partition Word-vectors Averaging6, 7, 41.25Reject
5805.67Deep Recurrent Gaussian Process With Variational Sparse Spectrum Approximation5, 5, 70.94Reject
5815.67A Frank-wolfe Framework For Efficient And Effective Adversarial Attacks5, 5, 70.94Reject
5825.67Adaptive Gradient Methods With Dynamic Bound Of Learning Rate7, 4, 61.25Accept (Poster)
5835.67Convolutional Crfs For Semantic Segmentation7, 4, 61.25Reject
5845.67Ppd: Permutation Phase Defense Against Adversarial Examples In Deep Learning6, 7, 41.25Reject
5855.67Generalizable Adversarial Training Via Spectral Normalization6, 5, 60.47Accept (Poster)
5865.67Cbow Is Not All You Need: Combining Cbow With The Compositional Matrix Space Model6, 5, 60.47Accept (Poster)
5875.67Soseleto: A Unified Approach To Transfer Learning And Training With Noisy Labels7, 5, 50.94Reject
5885.67Revisiting Reweighted Wake-sleep5, 6, 60.47Reject
5895.67Lipschitz Regularized Deep Neural Networks Generalize4, 6, 71.25Reject
5905.67Necst: Neural Joint Source-channel Coding6, 4, 71.25Reject
5915.67Multi-objective Training Of Generative Adversarial Networks With Multiple Discriminators6, 5, 60.47Reject
5925.67Small Steps And Giant Leaps: Minimal Newton Solvers For Deep Learning7, 7, 31.89Reject
5935.67Actrce: Augmenting Experience Via Teacher’s Advice5, 7, 50.94Reject
5945.67Adaptive Sample-space & Adaptive Probability Coding: A Neural-network Based Approach For Compression5, 7, 50.94Reject
5955.67Collapse Of Deep And Narrow Neural Nets6, 4, 71.25Reject
5965.67Incremental Training Of Multi-generative Adversarial Networks5, 6, 60.47Reject
5975.67Visual Explanation By Interpretation: Improving Visual Feedback Capabilities Of Deep Neural Networks8, 4, 51.70Accept (Poster)
5985.67The Loss Landscape Of Overparameterized Neural Networks5, 7, 50.94Reject
5995.67Rotation Equivariant Networks Via Conic Convolution And The Dft4, 7, 61.25N/A
6005.67Backprop With Approximate Activations For Memory-efficient Network Training5, 7, 50.94Reject
6015.67Nested Dithered Quantization For Communication Reduction In Distributed Training5, 5, 70.94Reject
6025.67Switching Linear Dynamics For Variational Bayes Filtering6, 4, 71.25Reject
6035.67Exploring The Interpretability Of Lstm Neural Networks Over Multi-variable Data6, 5, 60.47Reject
6045.67Pix2scene: Learning Implicit 3d Representations From Images5, 6, 60.47Reject
6055.67Manifold Regularization With Gans For Semi-supervised Learning7, 5, 50.94Reject
6065.67Random Mask: Towards Robust Convolutional Neural Networks6, 7, 41.25Reject
6075.67Predict Then Propagate: Graph Neural Networks Meet Personalized Pagerank5, 5, 70.94Accept (Poster)
6085.67Pyramid Recurrent Neural Networks For Multi-scale Change-point Detection4, 6, 71.25Reject
6095.67Adversarial Attacks On Node Embeddings5, 6, 60.47Reject
6105.67Learning Exploration Policies For Navigation3, 7, 71.89Accept (Poster)
6115.67Domain Adaptation For Structured Output Via Disentangled Patch Representations7, 5, 50.94Reject
6125.67Doubly Sparse: Sparse Mixture Of Sparse Experts For Efficient Softmax Inference6, 4, 71.25Reject
6135.67Infinitely Deep Infinite-width Networks5, 6, 60.47Reject
6145.67A Model Cortical Network For Spatiotemporal Sequence Learning And Prediction7, 7, 31.89Reject
6155.67Perception-aware Point-based Value Iteration For Partially Observable Markov Decision Processes6, 4, 71.25Reject
6165.67Adversarial Exploration Strategy For Self-supervised Imitation Learning7, 5, 50.94Reject
6175.67Gradient-based Training Of Slow Feature Analysis By Differentiable Approximate Whitening5, 6, 60.47Reject
6185.67A Closer Look At Deep Learning Heuristics: Learning Rate Restarts, Warmup And Distillation4, 7, 61.25Accept (Poster)
6195.67Learning State Representations In Complex Systems With Multimodal Data6, 6, 50.47Reject
6205.67Representing Formal Languages: A Comparison Between Finite Automata And Recurrent Neural Networks7, 5, 50.94Accept (Poster)
6215.67Controlling Covariate Shift Using Equilibrium Normalization Of Weights4, 6, 71.25Reject
6225.67Accelerating Nonconvex Learning Via Replica Exchange Langevin Diffusion4, 7, 61.25Accept (Poster)
6235.67Neural Networks With Structural Resistance To Adversarial Attacks5, 5, 70.94Reject
6245.67Interactive Parallel Exploration For Reinforcement Learning In Continuous Action Spaces6, 4, 71.25Reject
6255.67Neural Separation Of Observed And Unobserved Distributions6, 5, 60.47Reject
6265.67Dynamic Early Terminating Of Multiply Accumulate Operations For Saving Computation Cost In Convolutional Neural Networks5, 6, 60.47Reject
6275.67Codraw: Collaborative Drawing As A Testbed For Grounded Goal-driven Communication4, 6, 71.25Reject
6285.67Understanding & Generalizing Alphago Zero5, 7, 50.94Reject
6295.67Learning Actionable Representations With Goal Conditioned Policies5, 6, 60.47Accept (Poster)
6305.67Deep Denoising: Rate-optimal Recovery Of Structured Signals With A Deep Prior6, 5, 60.47Reject
6315.67Attentive Task-agnostic Meta-learning For Few-shot Text Classification5, 5, 70.94Reject
6325.67Mile: A Multi-level Framework For Scalable Graph Embedding7, 4, 61.25Reject
6335.67Stochastic Gradient/mirror Descent: Minimax Optimality And Implicit Regularization7, 5, 50.94Accept (Poster)
6345.67Teacher Guided Architecture Search6, 5, 60.47Reject
6355.67Knowledge Representation For Reinforcement Learning Using General Value Functions6, 7, 41.25N/A
6365.67Learning Neural Random Fields With Inclusive Auxiliary Generators6, 6, 50.47Reject
6375.67Lit: Block-wise Intermediate Representation Training For Model Compression5, 6, 60.47Reject
6385.67Adaptive Mixture Of Low-rank Factorizations For Compact Neural Modeling4, 6, 71.25Reject
6395.67Learning Backpropagation-free Deep Architectures With Kernels6, 6, 50.47Reject
6405.67Identifying Generalization Properties In Neural Networks6, 5, 60.47Reject
6415.67Unsupervised Learning Of Sentence Representations Using Sequence Consistency7, 5, 50.94Reject
6425.67Dana: Scalable Out-of-the-box Distributed Asgd Without Retuning5, 7, 50.94Reject
6435.67Clean-label Backdoor Attacks6, 7, 41.25Reject
6445.67Meta-learning With Domain Adaptation For Few-shot Learning Under Domain Shift6, 5, 60.47Reject
6455.67Amortized Bayesian Meta-learning6, 5, 60.47Accept (Poster)
6465.67(unconstrained) Beam Search Is Sensitive To Large Search Discrepancies5, 5, 70.94Reject
6475.67Universal Successor Features For Transfer Reinforcement Learning4, 7, 61.25Reject
6485.67Learning Embeddings Into Entropic Wasserstein Spaces7, 7, 31.89Accept (Poster)
6495.67Reliable Uncertainty Estimates In Deep Neural Networks Using Noise Contrastive Priors7, 4, 61.25Reject
6505.67Can I Trust You More? Model-agnostic Hierarchical Explanations6, 6, 50.47Reject
6515.67Hallucinations In Neural Machine Translation6, 4, 71.25Reject
6525.67Learning Data-derived Privacy Preserving Representations From Information Metrics6, 5, 60.47Reject
6535.67The Expressive Power Of Deep Neural Networks With Circulant Matrices4, 7, 61.25Reject
6545.67Flow++: Improving Flow-based Generative Models With Variational Dequantization And Architecture Design6, 6, 50.47Reject
6555.67Overcoming Multi-model Forgetting6, 5, 60.47Reject
6565.67Graph Matching Networks For Learning The Similarity Of Graph Structured Objects5, 6, 60.47Reject
6575.67Aim: Adversarial Inference By Matching Priors And Conditionals7, 4, 61.25Reject
6585.67Where Off-policy Deep Reinforcement Learning Fails7, 5, 50.94Reject
6595.67Explaining Image Classifiers By Counterfactual Generation5, 7, 50.94Accept (Poster)
6605.67Adaptive Network Sparsification Via Dependent Variational Beta-bernoulli Dropout5, 5, 70.94Reject
6615.67Unsupervised Emergence Of Spatial Structure From Sensorimotor Prediction4, 6, 71.25Reject
6625.67State-regularized Recurrent Networks6, 6, 50.47Reject
6635.67Context Mover's Distance & Barycenters: Optimal Transport Of Contexts For Building Representations4, 6, 71.25Reject
6645.67Human-level Protein Localization With Convolutional Neural Networks4, 5, 81.70Accept (Poster)
6655.67Better Generalization With On-the-fly Dataset Denoising5, 6, 60.47Reject
6665.67Adaptive Pruning Of Neural Language Models For Mobile Devices6, 5, 60.47Reject
6675.67On Difficulties Of Probability Distillation5, 7, 50.94Reject
6685.67Improved Learning Of One-hidden-layer Convolutional Neural Networks With Overlaps6, 5, 60.47Reject
6695.67Fast Adversarial Training For Semi-supervised Learning7, 5, 50.94Reject
6705.67Amortized Context Vector Inference For Sequence-to-sequence Networks6, 6, 50.47Reject
6715.67Predicted Variables In Programming5, 5, 70.94Reject
6725.67Guiding Physical Intuition With Neural Stethoscopes6, 4, 71.25Reject
6735.67Optimal Transport Maps For Distribution Preserving Operations On Latent Spaces Of Generative Models7, 5, 50.94Accept (Poster)
6745.67Towards Understanding Regularization In Batch Normalization5, 6, 60.47Accept (Poster)
6755.67Hierarchically-structured Variational Autoencoders For Long Text Generation5, 5, 70.94Reject
6765.67Learning To Augment Influential Data6, 6, 50.47Reject
6775.67Actor-attention-critic For Multi-agent Reinforcement Learning6, 7, 41.25Reject
6785.67A Unified Theory Of Adaptive Stochastic Gradient Descent As Bayesian Filtering5, 7, 50.94Reject
6795.67Deep Probabilistic Video Compression6, 5, 60.47Reject
6805.67Rethinking Knowledge Graph Propagation For Zero-shot Learning7, 5, 50.94N/A
6815.67The Unusual Effectiveness Of Averaging In Gan Training5, 6, 60.47Accept (Poster)
6825.67Zero-resource Multilingual Model Transfer: Learning What To Share6, 5, 60.47Reject
6835.67The Meaning Of "most" For Visual Question Answering Models7, 5, 50.94Reject
6845.67Spectral Inference Networks: Unifying Deep And Spectral Learning5, 7, 50.94Accept (Poster)
6855.67Neural Persistence: A Complexity Measure For Deep Neural Networks Using Algebraic Topology6, 4, 71.25Accept (Poster)
6865.50Unlabeled Disentangling Of Gans With Guided Siamese Networks5, 6, 5, 60.50Reject
6875.50Are Generative Classifiers More Robust To Adversarial Attacks?4, 6, 4, 81.66Reject
6885.50Convergent Reinforcement Learning With Function Approximation: A Bilevel Optimization Perspective5, 6, 6, 50.50Reject
6895.50Multi-way Encoding For Robustness To Adversarial Attacks4, 6, 6, 60.87Reject
6905.50Music Transformer: Generating Music With Long-term Structure7, 6, 4, 51.12Accept (Poster)
6915.50Caml: Fast Context Adaptation Via Meta-learning4, 6, 6, 60.87Reject
6925.50Sample Efficient Imitation Learning For Continuous Control5, 7, 5, 50.87Accept (Poster)
6935.33Diffranet: Automatic Classification Of Serial Crystallography Diffraction Patterns5, 3, 82.05Reject
6945.33Learning To Decompose Compound Questions With Reinforcement Learning6, 5, 50.47Reject
6955.33Probabilistic Model-based Dynamic Architecture Search5, 6, 50.47Reject
6965.33Composing Entropic Policies Using Divergence Correction4, 7, 51.25Reject
6975.33Zero-shot Learning For Speech Recognition With Universal Phonetic Model7, 4, 51.25Reject
6985.33Clinical Risk: Wavelet Reconstruction Networks For Marked Point Processes7, 4, 51.25Reject
6995.33Graph2seq: Graph To Sequence Learning With Attention-based Neural Networks6, 6, 40.94Reject
7005.33Knowledge Distillation From Few Samples4, 6, 60.94Reject
7015.33Caveats For Information Bottleneck In Deterministic Scenarios2, 8, 62.49Accept (Poster)
7025.33Mimicking Actions Is A Good Strategy For Beginners: Fast Reinforcement Learning With Expert Action Sequences5, 5, 60.47Reject
7035.33Rethinking Learning Rate Schedules For Stochastic Optimization6, 4, 60.94Reject
7045.33Consistent Jumpy Predictions For Videos And Scenes7, 4, 51.25Reject
7055.33Adapting Auxiliary Losses Using Gradient Similarity4, 6, 60.94Reject
7065.33I Know The Feeling: Learning To Converse With Empathy4, 7, 51.25Reject
7075.33Learning From The Experience Of Others: Approximate Empirical Bayes In Neural Networks6, 3, 71.70Reject
7085.33Hierarchically Clustered Representation Learning5, 5, 60.47Reject
7095.33Learning To Refer To 3d Objects With Natural Language6, 6, 40.94Reject
7105.33Advocacy Learning4, 4, 81.89Reject
7115.33Area Attention6, 5, 50.47Reject
7125.33An Active Learning Framework For Efficient Robust Policy Search5, 6, 50.47Reject
7135.33Selective Convolutional Units: Improving Cnns Via Channel Selectivity6, 5, 50.47Reject
7145.33Improved Robustness To Adversarial Examples Using Lipschitz Regularization Of The Loss6, 6, 40.94Reject
7155.33Classification From Positive, Unlabeled And Biased Negative Data5, 6, 50.47Reject
7165.33Sliced Wasserstein Auto-encoders6, 4, 60.94Accept (Poster)
7175.33Learning To Encode Spatial Relations From Natural Language6, 5, 50.47Reject
7185.33Learning To Separate Domains In Generalized Zero-shot And Open Set Learning: A Probabilistic Perspective5, 5, 60.47Reject
7195.33Sorting Out Lipschitz Function Approximation7, 5, 41.25Reject
7205.33Meta-learning For Contextual Bandit Exploration7, 6, 31.70Reject
7215.33Systematic Generalization: What Is Required And Can It Be Learned?4, 6, 60.94Accept (Poster)
7225.33Local Image-to-image Translation Via Pixel-wise Highway Adaptive Instance Normalization6, 5, 50.47Reject
7235.33Negotiating Team Formation Using Deep Reinforcement Learning5, 6, 50.47Reject
7245.33Making Convolutional Networks Shift-invariant Again6, 5, 50.47Reject
7255.33Characterizing Attacks On Deep Reinforcement Learning5, 5, 60.47Reject
7265.33The Nonlinearity Coefficient - Predicting Generalization In Deep Neural Networks5, 7, 41.25Reject
7275.33Learning Global Additive Explanations For Neural Nets Using Model Distillation6, 4, 60.94Reject
7285.33Open Loop Hyperparameter Optimization And Determinantal Point Processes5, 6, 50.47Reject
7295.33Complementary-label Learning For Arbitrary Losses And Models5, 5, 60.47Reject
7305.33Mitigating Bias In Natural Language Inference Using Adversarial Learning4, 4, 81.89N/A
7315.33A Deep Learning Approach For Dynamic Survival Analysis With Competing Risks4, 8, 41.89Reject
7325.33Cdeepex: Contrastive Deep Explanations5, 6, 50.47Reject
7335.33Surprising Negative Results For Generative Adversarial Tree Search5, 5, 60.47Reject
7345.33Tangent-normal Adversarial Regularization For Semi-supervised Learning5, 4, 71.25N/A
7355.33The Expressive Power Of Gated Recurrent Units As A Continuous Dynamical System5, 6, 50.47Reject
7365.33Learning To Coordinate Multiple Reinforcement Learning Agents For Diverse Query Reformulation4, 7, 51.25Reject
7375.33Domain Adaptation Via Distribution And Representation Matching: A Case Study On Training Data Selection Via Reinforcement Learning4, 7, 51.25Reject
7385.33Optimal Margin Distribution Network5, 6, 50.47Reject
7395.33Generalization And Regularization In Dqn6, 5, 50.47Reject
7405.33Unsupervised Conditional Generation Using Noise Engineered Mode Matching Gan5, 5, 60.47Reject
7415.33Improved Language Modeling By Decoding The Past6, 7, 31.70Reject
7425.33Adversarial Sampling For Active Learning6, 5, 50.47Reject
7435.33Multi-task Learning With Gradient Communication5, 4, 71.25Reject
7445.33Quality Evaluation Of Gans Using Cross Local Intrinsic Dimensionality4, 6, 60.94Reject
7455.33Perfect Match: A Simple Method For Learning Representations For Counterfactual Inference With Neural Networks5, 5, 60.47Reject
7465.33Dynamic Planning Networks4, 6, 60.94Reject
7475.33Provable Guarantees On Learning Hierarchical Generative Models With Deep Cnns6, 6, 40.94Reject
7485.33Dataset Distillation5, 6, 50.47Reject
7495.33Simple Black-box Adversarial Attacks6, 6, 40.94Reject
7505.33Probabilistic Knowledge Graph Embeddings5, 6, 50.47Reject
7515.33Graph Neural Networks With Generated Parameters For Relation Extraction4, 6, 60.94Reject
7525.33On Learning Heteroscedastic Noise Models Within Differentiable Bayes Filters6, 4, 60.94Reject
7535.33Live Face De-identification In Video6, 4, 60.94N/A
7545.33Meta Learning With Fast/slow Learners5, 6, 50.47Reject
7555.33Curiosity-driven Experience Prioritization Via Density Estimation6, 4, 60.94Reject
7565.33Integrated Steganography And Steganalysis With Generative Adversarial Networks5, 6, 50.47Reject
7575.33Entropic Gans Meet Vaes: A Statistical Approach To Compute Sample Likelihoods In Gans5, 5, 60.47Reject
7585.33Probabilistic Federated Neural Matching4, 6, 60.94Reject
7595.33Local Binary Pattern Networks For Character Recognition5, 6, 50.47Reject
7605.33Out-of-sample Extrapolation With Neuron Editing5, 5, 60.47Reject
7615.33Large-scale Visual Speech Recognition4, 3, 92.62Reject
7625.33Knows When It Doesn’t Know: Deep Abstaining Classifiers6, 5, 50.47Reject
7635.33Connecting The Dots Between Mle And Rl For Sequence Generation5, 6, 50.47Reject
7645.33Neural Predictive Belief Representations4, 7, 51.25Reject
7655.33Hint-based Training For Non-autoregressive Translation6, 6, 40.94Reject
7665.33Neural Model-based Reinforcement Learning For Recommendation5, 6, 50.47Reject
7675.33Domain Generalization Via Invariant Representation Under Domain-class Dependency4, 7, 51.25Reject
7685.33Model Compression With Generative Adversarial Networks5, 6, 50.47Reject
7695.33Learning Partially Observed Pde Dynamics With Neural Networks6, 5, 50.47Reject
7705.33Heated-up Softmax Embedding8, 3, 52.05Reject
7715.33Transformer-xl: Language Modeling With Longer-term Dependency6, 6, 40.94Reject
7725.33Improving Composition Of Sentence Embeddings Through The Lens Of Statistical Relational Learning5, 5, 60.47Reject
7735.33Invariant-equivariant Representation Learning For Multi-class Data7, 5, 41.25Reject
7745.33Training Generative Latent Models By Variational F-divergence Minimization6, 5, 50.47Reject
7755.33Decaynet: A Study On The Cell States Of Long Short Term Memories8, 4, 41.89Reject
7765.33Label Propagation Networks5, 5, 60.47Reject
7775.33Augment Your Batch: Better Training With Larger Batches4, 8, 41.89Reject
7785.33Deep Learning Generalizes Because The Parameter-function Map Is Biased Towards Simple Functions7, 5, 41.25Accept (Poster)
7795.33Towards Gan Benchmarks Which Require Generalization6, 7, 31.70Accept (Poster)
7805.33Mahinet: A Neural Network For Many-class Few-shot Learning With Class Hierarchy5, 6, 50.47Reject
7815.33Learning To Describe Scenes With Programs6, 4, 60.94Accept (Poster)
7825.33Meta-learning Neural Bloom Filters3, 6, 71.70Reject
7835.33Cohen Welling Bases & So(2)-equivariant Classifiers Using Tensor Nonlinearity.3, 7, 61.70Reject
7845.33Antman: Sparse Low-rank Compression To Accelerate Rnn Inference6, 5, 50.47Reject
7855.33Learning Internal Dense But External Sparse Structures Of Deep Neural Network5, 5, 60.47Reject
7865.33Generative Adversarial Networks For Extreme Learned Image Compression6, 6, 40.94Reject
7875.33Adaptive Neural Trees4, 6, 60.94Reject
7885.33Graph Classification With Geometric Scattering5, 6, 50.47Reject
7895.33Point Cloud Gan5, 5, 60.47Reject
7905.33Search-guided, Lightly-supervised Training Of Structured Prediction Energy Networks5, 7, 41.25Reject
7915.33Exploring Curvature Noise In Large-batch Stochastic Optimization5, 6, 50.47Reject
7925.33Nsga-net: A Multi-objective Genetic Algorithm For Neural Architecture Search6, 5, 50.47Reject
7935.33Massively Parallel Hyperparameter Tuning6, 5, 50.47Reject
7945.33Learning And Planning With A Semantic Model4, 7, 51.25Reject
7955.33Playing The Game Of Universal Adversarial Perturbations6, 5, 50.47Reject
7965.33Learning To Adapt In Dynamic, Real-world Environments Through Meta-reinforcement Learning7, 2, 72.36Accept (Poster)
7975.33Bliss In Non-isometric Embedding Spaces4, 6, 60.94Reject
7985.33An Experimental Study Of Layer-level Training Speed And Its Impact On Generalization6, 5, 50.47Reject
7995.33Coverage And Quality Driven Training Of Generative Image Models5, 4, 71.25Reject
8005.33Multi-agent Deep Reinforcement Learning With Extremely Noisy Observations7, 3, 61.70Reject
8015.33Volumetric Convolution: Automatic Representation Learning In Unit Ball6, 5, 50.47Reject
8025.33Stackelberg Gan: Towards Provable Minimax Equilibrium Via Multi-generator Architectures5, 7, 41.25Reject
8035.33Exploring And Enhancing The Transferability Of Adversarial Examples4, 6, 60.94Reject
8045.33On The Ineffectiveness Of Variance Reduced Optimization For Deep Learning5, 6, 50.47Reject
8055.33Skip-gram Word Embeddings In Hyperbolic Space5, 5, 60.47Reject
8065.33The Case For Full-matrix Adaptive Regularization6, 5, 50.47Reject
8075.33Policy Optimization Via Stochastic Recursive Gradient Algorithm5, 6, 50.47Reject
8085.33The Universal Approximation Power Of Finite-width Deep Relu Networks5, 5, 60.47Reject
8095.33Synonymnet: Multi-context Bilateral Matching For Entity Synonyms5, 7, 41.25Reject
8105.33Convolutional Neural Networks On Non-uniform Geometrical Signals Using Euclidean Spectral Transformation5, 7, 41.25Accept (Poster)
8115.33Coco-gan: Conditional Coordinate Generative Adversarial Network6, 6, 40.94Reject
8125.33Neural Causal Discovery With Learnable Input Noise4, 4, 81.89Reject
8135.33Learning Graph Decomposition7, 4, 51.25N/A
8145.33Exploiting Cross-lingual Subword Similarities In Low-resource Document Classification4, 6, 60.94Reject
8155.33Towards Decomposed Linguistic Representation With Holographic Reduced Representation5, 5, 60.47Reject
8165.33Gaussian-gated Lstm: Improved Convergence By Reducing State Updates5, 5, 60.47Reject
8175.33Lorentzian Distance Learning6, 5, 50.47Reject
8185.33A Modern Take On The Bias-variance Tradeoff In Neural Networks5, 7, 41.25Reject
8195.33State-denoised Recurrent Neural Networks6, 5, 50.47Reject
8205.33Generative Adversarial Self-imitation Learning5, 6, 50.47Reject
8215.33Network Compression Using Correlation Analysis Of Layer Responses5, 6, 50.47Reject
8225.33Learning Generative Models For Demixing Of Structured Signals From Their Superposition Using Gans4, 5, 71.25Reject
8235.33Purchase As Reward : Session-based Recommendation By Imagination Reconstruction5, 6, 50.47Reject
8245.33Geneval: A Benchmark Suite For Evaluating Generative Models5, 5, 60.47Reject
8255.33Deep Graph Translation5, 5, 60.47Reject
8265.33Unseen Action Recognition With Unpaired Adversarial Multimodal Learning7, 5, 41.25Reject
8275.33Escaping Flat Areas Via Function-preserving Structural Network Modifications6, 4, 60.94Reject
8285.33Reducing Overconfident Errors Outside The Known Distribution6, 4, 60.94Reject
8295.33Low Latency Privacy Preserving Inference5, 6, 50.47Reject
8305.33Causal Importance Of Orientation Selectivity For Generalization In Image Recognition7, 5, 41.25Reject
8315.33What Would Pi* Do?: Imitation Learning Via Off-policy Reinforcement Learning5, 5, 60.47Reject
8325.33Engan: Latent Space Mcmc And Maximum Entropy Generators For Energy-based Models6, 5, 50.47Reject
8335.33Graph Transformation Policy Network For Chemical Reaction Prediction5, 6, 50.47Reject
8345.33Importance Resampling For Off-policy Policy Evaluation6, 5, 50.47Reject
8355.33Cnnsat: Fast, Accurate Boolean Satisfiability Using Convolutional Neural Networks5, 6, 50.47Reject
8365.33An Efficient And Margin-approaching Zero-confidence Adversarial Attack5, 5, 60.47Reject
8375.25Diverse Machine Translation With A Single Multinomial Latent Variable3, 6, 5, 71.48Reject
8385.25Optimal Attacks Against Multiple Classifiers5, 4, 6, 60.83Reject
8395.25Unified Recurrent Network For Many Feature Types4, 6, 4, 71.30Reject
8405.25An Alarm System For Segmentation Algorithm Based On Shape Model7, 3, 6, 51.48Reject
8415.25P^2ir: Universal Deep Node Representation Via Partial Permutation Invariant Set Functions4, 7, 5, 51.09Reject
8425.25Improving Generative Adversarial Imitation Learning With Non-expert Demonstrations5, 5, 7, 41.09Reject
8435.25Towards A Better Understanding Of Vector Quantized Autoencoders5, 7, 3, 61.48Reject
8445.25On The Spectral Bias Of Neural Networks4, 6, 5, 60.83Reject
8455.20Deep Neuroevolution: Genetic Algorithms Are A Competitive Alternative For Training Deep Neural Networks For Reinforcement Learning6, 6, 4, 3, 71.47Reject
8465.00Accelerated Value Iteration Via Anderson Mixing7, 4, 41.41Reject
8475.00A Case For Object Compositionality In Deep Generative Models Of Images5, 4, 60.82Reject
8485.00Guided Exploration In Deep Reinforcement Learning7, 5, 31.63Reject
8495.00Plan Online, Learn Offline: Efficient Learning And Exploration Via Model-based Control6, 5, 40.82Accept (Poster)
8505.00K-nearest Neighbors By Means Of Sequence To Sequence Deep Neural Networks And Memory Networks6, 5, 40.82Reject
8515.00Mlprune: Multi-layer Pruning For Automated Neural Network Compression5, 6, 40.82Reject
8525.00The Anisotropic Noise In Stochastic Gradient Descent: Its Behavior Of Escaping From Minima And Regularization Effects4, 6, 50.82Reject
8535.00Transfer Learning For Estimating Causal Effects Using Neural Networks7, 5, 31.63N/A
8545.00Cross-entropy Loss Leads To Poor Margins3, 4, 8, 5, 51.67Reject
8555.00Tequilagan: How To Easily Identify Gan Samples4, 6, 50.82Reject
8565.00Structured Content Preservation For Unsupervised Text Style Transfer5, 6, 40.82N/A
8575.00Correction Networks: Meta-learning For Zero-shot Learning4, 4, 71.41Reject
8585.00Nattack: A Strong And Universal Gaussian Black-box Adversarial Attack7, 4, 41.41Reject
8595.00Where And When To Look? Spatial-temporal Attention For Action Recognition In Videos6, 3, 61.41Reject
8605.00Adversarial Audio Super-resolution With Unsupervised Feature Losses4, 5, 60.82Reject
8615.00An Adversarial Learning Framework For A Persona-based Multi-turn Dialogue Model6, 4, 50.82Reject
8625.00Zero-shot Dual Machine Translation4, 6, 50.82Reject
8635.00Learning To Progressively Plan5, 5, 50.00Reject
8645.00Deep Clustering Based On A Mixture Of Autoencoders6, 4, 50.82N/A
8655.00What Is In A Translation Unit? Comparing Character And Subword Representations Beyond Translation5, 5, 50.00N/A
8665.00Learning To Remember: Dynamic Generative Memory For Continual Learning4, 3, 82.16Reject
8675.00A Recurrent Neural Cascade-based Model For Continuous-time Diffusion Process7, 4, 41.41Reject
8685.00Nesterov's Method Is The Discretization Of A Differential Equation With Hessian Damping4, 5, 60.82N/A
8695.00Representation-constrained Autoencoders And An Application To Wireless Positioning5, 4, 60.82Reject
8705.00Towards Resisting Large Data Variations Via Introspective Learning4, 5, 60.82N/A
8715.00Transferrable End-to-end Learning For Protein Interface Prediction5, 5, 50.00Reject
8725.00Learning Joint Wasserstein Auto-encoders For Joint Distribution Matching6, 5, 40.82Reject
8735.00Incremental Few-shot Learning With Attention Attractor Networks5, 5, 50.00Reject
8745.00Learning With Random Learning Rates.6, 4, 50.82Reject
8755.00Bias Also Matters: Bias Attribution For Deep Neural Network Explanation5, 5, 50.00Reject
8765.00Engaging Image Captioning Via Personality5, 5, 50.00N/A
8775.00Generative Adversarial Models For Learning Private And Fair Representations4, 4, 71.41Reject
8785.00The Gan Landscape: Losses, Architectures, Regularization, And Normalization4, 4, 71.41Reject
8795.00Generative Ensembles For Robust Anomaly Detection5, 4, 60.82Reject
8805.00Backplay: 'man Muss Immer Umkehren'5, 5, 50.00Reject
8815.00Learning Diverse Generations Using Determinantal Point Processes5, 5, 50.00Reject
8825.00Conditional Network Embeddings4, 6, 50.82Accept (Poster)
8835.00Co-manifold Learning With Missing Data4, 4, 71.41Reject
8845.00Dynamic Graph Representation Learning Via Self-attention Networks4, 6, 50.82Reject
8855.00Noisy Information Bottlenecks For Generalization7, 5, 31.63Reject
8865.00Directional Analysis Of Stochastic Gradient Descent Via Von Mises-fisher Distributions In Deep Learning6, 5, 40.82Reject
8875.00Choicenet: Robust Learning By Revealing Output Correlations4, 6, 50.82Reject
8885.00Neural Message Passing For Multi-label Classification4, 6, 50.82Reject
8895.00Riemannian Transe: Multi-relational Graph Embedding In Non-euclidean Space5, 5, 50.00Reject
8905.00Ada-boundary: Accelerating The Dnn Training Via Adaptive Boundary Batch Selection5, 5, 50.00Reject
8915.00Deep Curiosity Search: Intra-life Exploration Can Improve Performance On Challenging Deep Reinforcement Learning Problems5, 5, 50.00Reject
8925.00Intrinsic Social Motivation Via Causal Influence In Multi-agent Rl5, 4, 60.82Reject
8935.00Empirical Observations On The Instability Of Aligning Word Vector Spaces With Gans4, 6, 50.82N/A
8945.00Analyzing Federated Learning Through An Adversarial Lens5, 4, 60.82Reject
8955.00Variational Smoothing In Recurrent Neural Network Language Models7, 6, 22.16Accept (Poster)
8965.00Stop Memorizing: A Data-dependent Regularization Framework For Intrinsic Pattern Learning7, 4, 41.41Reject
8975.00Probabilistic Semantic Embedding7, 4, 41.41Reject
8985.00Globally Soft Filter Pruning For Efficient Convolutional Neural Networks6, 5, 40.82Reject
8995.00The Effectiveness Of Pre-trained Code Embeddings6, 4, 50.82Reject
9005.00Discovering Low-precision Networks Close To Full-precision Networks For Efficient Embedded Inference5, 4, 60.82Reject
9015.00On The Relationship Between Neural Machine Translation And Word Alignment4, 5, 60.82Reject
9025.00Cautious Deep Learning4, 7, 41.41Reject
9035.00End-to-end Learning Of A Convolutional Neural Network Via Deep Tensor Decomposition5, 5, 50.00N/A
9045.00Few-shot Classification On Graphs With Structural Regularized Gcns4, 6, 50.82Reject
9055.00A Better Baseline For Second Order Gradient Estimation In Stochastic Computation Graphs6, 5, 6, 31.22Reject
9065.00Unsupervised Multi-target Domain Adaptation: An Information Theoretic Approach6, 4, 50.82Reject
9075.00Improving Gaussian Mixture Latent Variable Model Convergence With Optimal Transport5, 5, 50.00N/A
9085.00Spatial-winograd Pruning Enabling Sparse Winograd Convolution5, 4, 60.82Reject
9095.00Towards Language Agnostic Universal Representations5, 4, 60.82Reject
9105.00Generative Adversarial Network Training Is A Continual Learning Problem5, 3, 71.63Reject
9115.00Local Stability And Performance Of Simple Gradient Penalty -wasserstein Gan5, 4, 60.82Reject
9125.00Understand The Dynamics Of Gans Via Primal-dual Optimization4, 5, 60.82Reject
9135.00A Main/subsidiary Network Framework For Simplifying Binary Neural Networks50.00N/A
9145.00Implicit Autoencoders3, 6, 61.41Reject
9155.00Excitation Dropout: Encouraging Plasticity In Deep Neural Networks5, 5, 50.00Reject
9165.00Convergence Properties Of Deep Neural Networks On Separable Data5, 5, 50.00Reject
9175.00Weakly-supervised Knowledge Graph Alignment With Adversarial Learning5, 5, 50.00Reject
9185.00Quantization For Rapid Deployment Of Deep Neural Networks5, 5, 50.00Reject
9195.00Harmonic Unpaired Image-to-image Translation6, 5, 40.82Accept (Poster)
9205.00On The Effectiveness Of Task Granularity For Transfer Learning5, 5, 50.00Reject
9215.00Relwalk -- A Latent Variable Model Approach To Knowledge Graph Embedding6, 5, 40.82Reject
9225.00Likelihood-based Permutation Invariant Loss Function For Probability Distributions5, 6, 40.82Reject
9235.00Link Prediction In Hypergraphs Using Graph Convolutional Networks6, 5, 40.82Reject
9245.00Physiological Signal Embeddings (phase) Via Interpretable Stacked Models6, 5, 40.82Reject
9255.00Transferring Slu Models In Novel Domains6, 5, 40.82Reject
9265.00Deep Reinforcement Learning Of Universal Policies With Diverse Environment Summaries4, 6, 50.82Reject
9275.00A Privacy-preserving Image Classification Framework With A Learnable Obfuscator5, 5, 50.00N/A
9285.00Optimistic Acceleration For Optimization5, 6, 5, 40.71Reject
9295.00Metric-optimized Example Weights4, 4, 71.41Reject
9305.00Novel Positional Encodings To Enable Tree-structured Transformers5, 4, 60.82Reject
9315.00The Importance Of Norm Regularization In Linear Graph Embedding: Theoretical Analysis And Empirical Demonstration7, 4, 41.41Reject
9325.00Analysis Of Memory Organization For Dynamic Neural Networks7, 5, 31.63Reject
9335.00Isa-vae: Independent Subspace Analysis With Variational Autoencoders4, 7, 41.41Reject
9345.00Inferring Reward Functions From Demonstrators With Unknown Biases5, 5, 50.00Reject
9355.00Approximation Capability Of Neural Networks On Sets Of Probability Measures And Tree-structured Data6, 5, 40.82Reject
9365.00Denoise While Aggregating: Collaborative Learning In Open-domain Question Answering4, 6, 50.82Reject
9375.00Learning Discriminators As Energy Networks In Adversarial Learning5, 5, 50.00Reject
9385.00Learning Representations Of Categorical Feature Combinations Via Self-attention5, 5, 50.00Reject
9395.00Therml: The Thermodynamics Of Machine Learning7, 3, 51.63Reject
9405.00Favae: Sequence Disentanglement Using In- Formation Bottleneck Principle5, 6, 40.82Reject
9415.00Learning Representations Of Sets Through Optimized Permutations6, 3, 61.41Accept (Poster)
9425.00Convolutional Neural Networks Combined With Runge-kutta Methods4, 5, 60.82Reject
9435.00Supportnet: Solving Catastrophic Forgetting In Class Incremental Learning With Support Data6, 5, 40.82Reject
9445.00Experience Replay For Continual Learning5, 5, 50.00Reject
9455.00Hypergan: Exploring The Manifold Of Neural Networks6, 5, 40.82Reject
9465.00Learning Neuron Non-linearities With Kernel-based Deep Neural Networks5, 4, 60.82Reject
9475.00Pairwise Augmented Gans With Adversarial Reconstruction Loss4, 6, 50.82Reject
9485.00Cutting Down Training Memory By Re-fowarding6, 4, 4, 61.00Reject
9495.00Multi-modal Generative Adversarial Networks For Diverse Datasets4, 61.00N/A
9505.00A Variational Autoencoder For Probabilistic Non-negative Matrix Factorisation4, 4, 71.41Reject
9515.00High Resolution And Fast Face Completion Via Progressively Attentive Gans5, 5, 50.00Reject
9525.00Redsync : Reducing Synchronization Traffic For Distributed Deep Learning5, 5, 50.00Reject
9535.00What A Difference A Pixel Makes: An Empirical Examination Of Features Used By Cnns For Categorisation4, 4, 71.41Reject
9545.00Graph2seq: Scalable Learning Dynamics For Graphs6, 5, 40.82Reject
9555.00Self-binarizing Networks5, 5, 50.00N/A
9565.00Dissecting An Adversarial Framework For Information Retrieval6, 5, 40.82Reject
9575.00Capacity Of Deep Neural Networks Under Parameter Quantization5, 5, 50.00N/A
9585.00Model Comparison For Semantic Grouping5, 5, 50.00Reject
9595.00Learning Abstract Models For Long-horizon Exploration4, 5, 60.82Reject
9605.00Finding Mixed Nash Equilibria Of Generative Adversarial Networks4, 5, 60.82Reject
9615.00Pointgrow: Autoregressively Learned Point Cloud Generation With Self-attention3, 6, 61.41N/A
9625.00Information Maximization Auto-encoding5, 6, 40.82Reject
9635.00Bayesian Deep Learning Via Stochastic Gradient Mcmc With A Stochastic Approximation Adaptation5, 4, 60.82Reject
9645.00Boosting Robustness Certification Of Neural Networks5, 6, 40.82Accept (Poster)
9655.00Vhegan: Variational Hetero-encoder Randomized Gan For Zero-shot Learning5, 5, 50.00Reject
9665.00Inducing Cooperation Via Learning To Reshape Rewards In Semi-cooperative Multi-agent Reinforcement Learning5, 5, 50.00Reject
9675.00Iteratively Learning From The Best6, 3, 61.41Reject
9685.00Déjà Vu: An Empirical Evaluation Of The Memorization Properties Of Convnets4, 5, 60.82Reject
9695.00Understanding The Effectiveness Of Lipschitz-continuity In Generative Adversarial Nets6, 4, 50.82Reject
9705.00Efficient Codebook And Factorization For Second Order Representation Learning4, 6, 50.82Reject
9715.00Reinforced Imitation Learning From Observations6, 5, 40.82Reject
9725.00Safe Policy Learning From Observations5, 5, 50.00Reject
9735.00Data Interpretation And Reasoning Over Scientific Plots6, 6, 31.41N/A
9745.00An Energy-based Framework For Arbitrary Label Noise Correction5, 5, 50.00Reject
9755.00Discrete Flow Posteriors For Variational Inference In Discrete Dynamical Systems4, 4, 71.41Reject
9765.00Human-guided Column Networks: Augmenting Deep Learning With Advice6, 4, 50.82Reject
9775.00Collaborative Multiagent Reinforcement Learning In Homogeneous Swarms6, 4, 50.82Reject
9785.00An Automatic Operation Batching Strategy For The Backward Propagation Of Neural Networks Having Dynamic Computation Graphs5, 6, 40.82Reject
9795.00Unicorn: Continual Learning With A Universal, Off-policy Agent4, 5, 60.82Reject
9805.00A Theoretical Framework For Deep And Locally Connected Relu Network3, 7, 51.63Reject
9815.00On Regularization And Robustness Of Deep Neural Networks5, 4, 60.82Reject
9825.00Strength In Numbers: Trading-off Robustness And Computation Via Adversarially-trained Ensembles5, 6, 40.82Reject
9835.00Canonical Correlation Analysis With Implicit Distributions5, 6, 40.82Reject
9845.00Dense Morphological Network: An Universal Function Approximator5, 5, 50.00Reject
9855.00Ad-vat: An Asymmetric Dueling Mechanism For Learning Visual Active Tracking5, 4, 60.82Accept (Poster)
9865.00Double Neural Counterfactual Regret Minimization5, 6, 40.82Reject
9875.00Guided Evolutionary Strategies: Escaping The Curse Of Dimensionality In Random Search5, 4, 60.82Reject
9885.00Using Ontologies To Improve Performance In Massively Multi-label Prediction6, 5, 40.82Reject
9895.00Accelerated Gradient Flow For Probability Distributions4, 5, 60.82Reject
9905.00Large Batch Size Training Of Neural Networks With Adversarial Training And Second-order Information4, 7, 41.41Reject
9915.00Phrase-based Attentions5, 5, 50.00Reject
9925.00Causal Reasoning From Meta-reinforcement Learning5, 4, 4, 71.22Reject
9935.00Interpretable Continual Learning4, 5, 60.82Reject
9945.00Tensor Ring Nets Adapted Deep Multi-task Learning6, 5, 40.82Reject
9955.00Reduced-gate Convolutional Lstm Design Using Predictive Coding For Next-frame Video Prediction5, 3, 71.63Reject
9965.00S3ta: A Soft, Spatial, Sequential, Top-down Attention Model5, 5, 50.00Reject
9975.00Solar: Deep Structured Representations For Model-based Reinforcement Learning5, 5, 50.00Reject
9985.00Learning To Control Self-assembling Morphologies: A Study Of Generalization Via Modularity4, 7, 41.41Reject
9995.00Snapquant: A Probabilistic And Nested Parameterization For Binary Networks4, 6, 50.82Reject
10005.00Spread Divergences5, 4, 60.82Reject
10015.00Characterizing Malicious Edges Targeting On Graph Neural Networks5, 5, 50.00Reject
10025.00N-ary Quantization For Cnn Model Compression And Inference Acceleration4, 4, 71.41Reject
10034.75Pooling Is Neither Necessary Nor Sufficient For Appropriate Deformation Stability In Cnns5, 4, 5, 50.43Reject
10044.75Geomstats: A Python Package For Riemannian Geometry In Machine Learning4, 4, 3, 81.92Reject
10054.75Multi-turn Dialogue Response Generation In An Adversarial Learning Framework4, 4, 6, 50.83Reject
10064.75Successor Options : An Option Discovery Algorithm For Reinforcement Learning4, 5, 6, 40.83Reject
10074.67Like What You Like: Knowledge Distill Via Neuron Selectivity Transfer4, 4, 60.94Reject
10084.67A Study Of Robustness Of Neural Nets Using Approximate Feature Collisions6, 4, 40.94Reject
10094.67Segen: Sample-ensemble Genetic Evolutionary Network Model5, 5, 40.47Reject
10104.67Unsupervised Disentangling Structure And Appearance6, 5, 31.25Reject
10114.67Predictive Uncertainty Through Quantization5, 4, 50.47Reject
10124.67Shaping Representations Through Communication5, 4, 50.47N/A
10134.67Diagnosing Language Inconsistency In Cross-lingual Word Embeddings6, 4, 40.94N/A
10144.67Explicit Recall For Efficient Exploration7, 4, 31.70Reject
10154.67Generalized Adaptive Moment Estimation3, 4, 71.70Reject
10164.67Neural Variational Inference For Embedding Knowledge Graphs5, 5, 40.47Reject
10174.67Holographic And Other Point Set Distances For Machine Learning4, 3, 71.70Reject
10184.67Geometry Aware Convolutional Filters For Omnidirectional Images Representation4, 6, 40.94Reject
10194.67End-to-end Learning Of Pharmacological Assays From High-resolution Microscopy Images6, 3, 51.25Reject
10204.67Ssoc: Learning Spontaneous And Self-organizing Communication For Multi-agent Collaboration4, 5, 50.47Reject
10214.67Estimating Heterogeneous Treatment Effects Using Neural Networks With The Y-learner5, 5, 40.47N/A
10224.67Na4, 5, 50.47N/A
10234.67Computation-efficient Quantization Method For Deep Neural Networks4, 5, 50.47Reject
10244.67Context-aware Forecasting For Multivariate Stationary Time-series5, 5, 40.47N/A
10254.67Traditional And Heavy Tailed Self Regularization In Neural Network Models4, 4, 60.94Reject
10264.67Efficient Dictionary Learning With Gradient Descent5, 4, 50.47Reject
10274.67Answer-based Adversarial Training For Generating Clarification Questions4, 6, 40.94N/A
10284.67Learning Hash Codes Via Hamming Distance Targets4, 6, 40.94Reject
10294.67On The Convergence And Robustness Of Batch Normalization6, 4, 40.94Reject
10304.67Zero-training Sentence Embedding Via Orthogonal Basis5, 4, 50.47Reject
10314.67Feature Prioritization And Regularization Improve Standard Accuracy And Adversarial Robustness5, 4, 50.47Reject
10324.67Probabilistic Binary Neural Networks6, 5, 31.25Reject
10334.67Differential Equation Networks5, 4, 50.47Reject
10344.67Stochastic Learning Of Additive Second-order Penalties With Applications To Fairness5, 5, 40.47Reject
10354.67Rectified Gradient: Layer-wise Thresholding For Sharp And Coherent Attribution Maps5, 5, 40.47Reject
10364.67When Will Gradient Methods Converge To Max-margin Classifier Under Relu Models?5, 4, 50.47Reject
10374.67An Efficient Network For Predicting Time-varying Distributions5, 4, 50.47N/A
10384.67Selectivity Metrics Can Overestimate The Selectivity Of Units: A Case Study On Alexnet5, 6, 31.25Reject
10394.67Effective Path: Know The Unknowns Of Neural Network4, 4, 60.94Reject
10404.67Exploiting Environmental Variation To Improve Policy Robustness In Reinforcement Learning5, 3, 61.25Reject
10414.67Mean Replacement Pruning5, 4, 50.47Reject
10424.67Inference Of Unobserved Event Streams With Neural Hawkes Particle Smoothing5, 4, 50.47Reject
10434.67Theoretical And Empirical Study Of Adversarial Examples5, 5, 40.47Reject
10444.67Domain Adaptive Transfer Learning3, 4, 71.70N/A
10454.67How Training Data Affect The Accuracy And Robustness Of Neural Networks For Image Classification4, 5, 50.47Reject
10464.67Learning Physics Priors For Deep Reinforcement Learing5, 4, 50.47Reject
10474.67Coupled Recurrent Models For Polyphonic Music Composition7, 3, 41.70Reject
10484.67Unifying Bilateral Filtering And Adversarial Training For Robust Neural Networks4, 5, 50.47Reject
10494.67Effective And Efficient Batch Normalization Using Few Uncorrelated Data For Statistics' Estimation4, 5, 50.47Reject
10504.67Visualizing And Discovering Behavioural Weaknesses In Deep Reinforcement Learning5, 5, 40.47N/A
10514.67Improving Latent Variable Descriptiveness By Modelling Rather Than Ad-hoc Factors4, 4, 60.94N/A
10524.67Accelerated Sparse Recovery Under Structured Measurements4, 5, 50.47Reject
10534.67Unsupervised Expectation Learning For Multisensory Binding4, 5, 50.47Reject
10544.67Crystalgan: Learning To Discover Crystallographic Structures With Generative Adversarial Networks3, 7, 41.70N/A
10554.67Deep-trim: Revisiting L1 Regularization For Connection Pruning Of Deep Network4, 6, 40.94Reject
10564.67Interpreting Adversarial Robustness: A View From Decision Surface In Input Space3, 6, 51.25Reject
10574.67What Information Does A Resnet Compress?4, 4, 60.94Reject
10584.67Highly Efficient 8-bit Low Precision Inference Of Convolutional Neural Networks6, 4, 40.94Reject
10594.67Measuring Density And Similarity Of Task Relevant Information In Neural Representations4, 5, 50.47Reject
10604.67Over-parameterization Improves Generalization In The Xor Detection Problem4, 5, 50.47Reject
10614.67Few-shot Learning By Exploiting Object Relation6, 4, 40.94N/A
10624.67N/a4, 4, 60.94N/A
10634.67Improved Resistance Of Neural Networks To Adversarial Images Through Generative Pre-training4, 4, 60.94Reject
10644.67Sparse Binary Compression: Towards Distributed Deep Learning With Minimal Communication6, 3, 51.25Reject
10654.67Dual Skew Divergence Loss For Neural Machine Translation3, 6, 51.25Reject
10664.67Discriminative Out-of-distribution Detection For Semantic Segmentation4, 7, 31.70Reject
10674.67Maximum A Posteriori On A Submanifold: A General Image Restoration Method With Gan4, 4, 60.94Reject
10684.67Robust Determinantal Generative Classifier For Noisy Labels And Adversarial Attacks3, 7, 41.70Reject
10694.67Learned Optimizers That Outperform On Wall-clock And Validation Loss4, 5, 50.47Reject
10704.67Pushing The Bounds Of Dropout5, 5, 40.47Reject
10714.67Manifold Alignment Via Feature Correspondence5, 5, 40.47Reject
10724.67Low-rank Matrix Factorization Of Lstm As Effective Model Compression5, 5, 40.47N/A
10734.67Security Analysis Of Deep Neural Networks Operating In The Presence Of Cache Side-channel Attacks4, 6, 40.94Reject
10744.67Cgnf: Conditional Graph Neural Fields5, 4, 50.47Reject
10754.67Self-supervised Generalisation With Meta Auxiliary Learning4, 4, 60.94Reject
10764.67An Investigation Of Model-free Planning5, 5, 40.47Reject
10774.67Evolving Intrinsic Motivations For Altruistic Behavior5, 6, 31.25N/A
10784.67Boosting Trust Region Policy Optimization By Normalizing Flows Policy6, 4, 40.94Reject
10794.67Mixfeat: Mix Feature In Latent Space Learns Discriminative Space6, 4, 40.94Reject
10804.67Unsupervised Image To Sequence Translation With Canvas-drawer Networks4, 6, 40.94Reject
10814.67Chemical Names Standardization Using Neural Sequence To Sequence Model4, 3, 71.70Reject
10824.67Tabnn: A Universal Neural Network Solution For Tabular Data5, 4, 50.47Reject
10834.67Compound Density Networks4, 5, 50.47Reject
10844.67Architecture Compression6, 4, 40.94Reject
10854.67Text Infilling3, 5, 61.25Reject
10864.67Approximation And Non-parametric Estimation Of Resnet-type Convolutional Neural Networks Via Block-sparse Fully-connected Neural Networks4, 6, 40.94Reject
10874.67Learning Gibbs-regularized Gans With Variational Discriminator Reparameterization5, 5, 40.47Reject
10884.67Learning To Attend On Essential Terms: An Enhanced Retriever-reader Model For Open-domain Question Answering4, 5, 50.47N/A
10894.67Progressive Weight Pruning Of Deep Neural Networks Using Admm5, 5, 40.47Reject
10904.67Tfgan: Improving Conditioning For Text-to-video Synthesis6, 3, 51.25N/A
10914.67Penetrating The Fog: The Path To Efficient Cnn Models5, 4, 50.47Reject
10924.67Pruning In Training: Learning And Ranking Sparse Connections In Deep Convolutional Networks5, 5, 40.47Reject
10934.67Expanding The Reach Of Federated Learning By Reducing Client Resource Requirements4, 5, 50.47Reject
10944.67Learning To Drive By Observing The Best And Synthesizing The Worst3, 6, 51.25Reject
10954.67Multi-grained Entity Proposal Network For Named Entity Recognition5, 5, 40.47Reject
10964.67Learning With Little Data: Evaluation Of Deep Learning Algorithms6, 4, 40.94N/A
10974.67A Fast Quasi-newton-type Method For Large-scale Stochastic Optimisation5, 5, 40.47Reject
10984.67Gradient Descent Happens In A Tiny Subspace4, 4, 60.94Reject
10994.67Pumpout: A Meta Approach For Robustly Training Deep Neural Networks With Noisy Labels6, 5, 31.25Reject
11004.67Convergence Guarantees For Rmsprop And Adam In Non-convex Optimization And An Empirical Comparison To Nesterov Acceleration5, 4, 50.47Reject
11014.67Logically-constrained Neural Fitted Q-iteration5, 4, 50.47N/A
11024.67Pa-gan: Improving Gan Training By Progressive Augmentation4, 5, 50.47Reject
11034.67Learning Graph Representations By Dendrograms4, 5, 50.47Reject
11044.67Outlier Detection From Image Data4, 5, 50.47Reject
11054.67Count-based Exploration With The Successor Representation5, 5, 40.47Reject
11064.67On Breiman’s Dilemma In Neural Networks: Success And Failure Of Normalized Margins4, 5, 50.47Reject
11074.67On Accurate Evaluation Of Gans For Language Generation5, 3, 61.25Reject
11084.67Noise-tempered Generative Adversarial Networks4, 5, 50.47N/A
11094.67A Unified View Of Deep Metric Learning Via Gradient Analysis3, 6, 51.25N/A
11104.67Ergodic Measure Preserving Flows5, 5, 40.47Reject
11114.67Stability Of Stochastic Gradient Method With Momentum For Strongly Convex Loss Functions4, 6, 40.94Reject
11124.67Siamese Capsule Networks5, 6, 31.25Reject
11134.67Learning Shared Manifold Representation Of Images And Attributes For Generalized Zero-shot Learning4, 5, 50.47Reject
11144.67Variational Sparse Coding4, 5, 50.47Reject
11154.67Parameter Efficient Training Of Deep Convolutional Neural Networks By Dynamic Sparse Reparameterization4, 4, 60.94Reject
11164.67Open Vocabulary Learning On Source Code With A Graph-structured Cache4, 4, 60.94Reject
11174.67Simile: Introducing Sequential Information Towards More Effective Imitation Learning6, 4, 40.94Reject
11184.67Differentiable Expected Bleu For Text Generation4, 4, 60.94Reject
11194.67Generating Realistic Stock Market Order Streams5, 5, 40.47Reject
11204.67Tinkering With Black Boxes: Counterfactuals Uncover Modularity In Generative Models6, 4, 40.94Reject
11214.67Neural Malware Control With Deep Reinforcement Learning5, 4, 50.47Reject
11224.67Three Continual Learning Scenarios And A Case For Generative Replay4, 4, 60.94Reject
11234.67On The Geometry Of Adversarial Examples5, 3, 61.25Reject
11244.67Investigating Cnns' Learning Representation Under Label Noise5, 4, 50.47Reject
11254.67Integral Pruning On Activations And Weights For Efficient Neural Networks4, 5, 50.47Reject
11264.67A Proposed Hierarchy Of Deep Learning Tasks6, 4, 40.94Reject
11274.673d-relnet: Joint Object And Relational Network For 3d Prediction6, 3, 51.25Reject
11284.67Ace: Artificial Checkerboard Enhancer To Induce And Evade Adversarial Attacks4, 4, 60.94Reject
11294.67Conscious Inference For Object Detection4, 6, 40.94Reject
11304.67Sufficient Conditions For Robustness To Adversarial Examples: A Theoretical And Empirical Study With Bayesian Neural Networks5, 5, 40.47Reject
11314.67Using Gans For Generation Of Realistic City-scale Ride Sharing/hailing Data Sets4, 5, 50.47Reject
11324.67Visual Imitation With A Minimal Adversary5, 3, 61.25Reject
11334.67Intriguing Properties Of Learned Representations3, 6, 51.25Reject
11344.67Sampling With Probability Matching5, 6, 31.25Reject
11354.67Meta-learning With Differentiable Closed-form Solvers5, 2, 72.05Accept (Poster)
11364.67The Conditional Entropy Bottleneck6, 2, 61.89Reject
11374.67Learning Information Propagation In The Dynamical Systems Via Information Bottleneck Hierarchy5, 4, 50.47Reject
11384.67Partially Mutual Exclusive Softmax For Positive And Unlabeled Data5, 4, 50.47Reject
11394.67Transfer Value Or Policy? A Value-centric Framework Towards Transferrable Continuous Reinforcement Learning5, 4, 50.47Reject
11404.67Consistency-based Anomaly Detection With Adaptive Multiple-hypotheses Predictions4, 5, 50.47Reject
11414.67Marginalized Average Attentional Network For Weakly-supervised Learning5, 6, 31.25Accept (Poster)
11424.67Online Bellman Residue Minimization Via Saddle Point Optimization5, 5, 40.47N/A
11434.67Object-oriented Model Learning Through Multi-level Abstraction4, 4, 60.94Reject
11444.67Expressiveness In Deep Reinforcement Learning6, 4, 40.94Reject
11454.67Scalable Neural Theorem Proving On Knowledge Bases And Natural Language4, 5, 50.47Reject
11464.50Improving On-policy Learning With Statistical Reward Accumulation4, 50.50Reject
11474.50Fast Binary Functional Search On Graph4, 50.50Reject
11484.50One-shot High-fidelity Imitation: Training Large-scale Deep Nets With Rl4, 4, 5, 50.50Reject
11494.50Online Abstraction With Mdp Homomorphisms For Deep Learning4, 50.50N/A
11504.50Fast Exploration With Simplified Models And Approximately Optimistic Planning In Model Based Reinforcement Learning5, 40.50Reject
11514.50Unification Of Recurrent Neural Network Architectures And Quantum Inspired Stable Design5, 4, 4, 50.50Reject
11524.40Context Dependent Modulation Of Activation Function4, 4, 4, 4, 60.80Reject
11534.33Multi-objective Value Iteration With Parameterized Threshold-based Safety Constraints5, 5, 30.94Reject
11544.33Bridging Hmms And Rnns Through Architectural Transformations5, 3, 50.94N/A
11554.33Learning Corresponded Rationales For Text Matching6, 4, 31.25Reject
11564.33Modeling Dynamics Of Biological Systems With Deep Generative Neural Networks6, 4, 31.25Reject
11574.33Learning Adversarial Examples With Riemannian Geometry6, 4, 31.25Reject
11584.33Q-neurons: Neuron Activations Based On Stochastic Jackson's Derivative Operators6, 2, 51.70Reject
11594.33From Nodes To Networks: Evolving Recurrent Neural Networks5, 4, 40.47Reject
11604.33Combining Global Sparse Gradients With Local Gradients5, 5, 30.94N/A
11614.33Efficient Sequence Labeling With Actor-critic Training5, 4, 40.47Reject
11624.33Learning A Neural-network-based Representation For Open Set Recognition4, 4, 50.47Reject
11634.33Mental Fatigue Monitoring Using Brain Dynamics Preferences7, 4, 22.05Reject
11644.33Feed: Feature-level Ensemble Effect For Knowledge Distillation5, 4, 40.47Reject
11654.33Pseudosaccades: A Simple Ensemble Scheme For Improving Classification Performance Of Deep Nets5, 4, 40.47Reject
11664.33Unsupervised Meta-learning For Reinforcement Learning3, 6, 41.25Reject
11674.33Total Style Transfer With A Single Feed-forward Network4, 5, 40.47Reject
11684.33Pruning With Hints: An Efficient Framework For Model Acceleration4, 5, 40.47Reject
11694.33Prototypical Examples In Deep Learning: Metrics, Characteristics, And Utility3, 5, 50.94Reject
11704.33Classifier-agnostic Saliency Map Extraction4, 5, 40.47Reject
11714.33A Guider Network For Multi-dual Learning4, 5, 40.47Reject
11724.33Targeted Adversarial Examples For Black Box Audio Systems4, 6, 31.25Reject
11734.33Meta-learning With Individualized Feature Space For Few-shot Classification5, 5, 30.94Reject
11744.33Improving Sample-based Evaluation For Generative Adversarial Networks5, 5, 30.94Reject
11754.33Variation Network: Learning High-level Attributes For Controlled Input Manipulation3, 6, 41.25Reject
11764.33A Convergent Variant Of The Boltzmann Softmax Operator In Reinforcement Learning4, 4, 50.47Reject
11774.33Variational Recurrent Models For Representation Learning5, 3, 50.94Reject
11784.33The Natural Language Decathlon: Multitask Learning As Question Answering5, 5, 30.94Reject
11794.33On The Effect Of The Activation Function On The Distribution Of Hidden Nodes In A Deep Network4, 5, 40.47Reject
11804.33Variational Domain Adaptation4, 4, 50.47Reject
11814.33Pixel Redrawn For A Robust Adversarial Defense4, 6, 31.25Reject
11824.33Composition And Decomposition Of Gans4, 5, 40.47Reject
11834.33Hiding Objects From Detectors: Exploring Transferrable Adversarial Patterns6, 4, 31.25N/A
11844.33Representation Flow For Action Recognition3, 5, 50.94N/A
11854.33Selective Self-training For Semi-supervised Learning4, 5, 40.47Reject
11864.33Realistic Adversarial Examples In 3d Meshes5, 5, 30.94N/A
11874.33Odin: Outlier Detection In Neural Networks5, 4, 40.47N/A
11884.33Sense: Semantically Enhanced Node Sequence Embedding4, 4, 50.47Reject
11894.33Label Smoothing And Logit Squeezing: A Replacement For Adversarial Training?7, 4, 22.05N/A
11904.33Blackmarks: Black-box Multi-bit Watermarking For Deep Neural Networks5, 4, 40.47Reject
11914.33Neural Probabilistic Motor Primitives For Humanoid Control3, 6, 41.25Accept (Poster)
11924.33Compositional Gan: Learning Conditional Image Composition4, 4, 50.47N/A
11934.33Representation Compression And Generalization In Deep Neural Networks6, 3, 41.25Reject
11944.33Beyond Winning And Losing: Modeling Human Motivations And Behaviors With Vector-valued Inverse Reinforcement Learning5, 4, 40.47Reject
11954.33Backdrop: Stochastic Backpropagation5, 3, 50.94Reject
11964.33Contextualized Role Interaction For Neural Machine Translation4, 5, 40.47Reject
11974.33Task-gan For Improved Gan Based Image Restoration4, 5, 40.47Reject
11984.33Model-agnostic Meta-learning For Multimodal Task Distributions3, 5, 50.94Reject
11994.33Stacked U-nets: A No-frills Approach To Natural Image Segmentation5, 3, 50.94N/A
12004.33Unsupervised Classification Into Unknown Number Of Classes4, 4, 50.47Reject
12014.33Fast Object Localization Via Sensitivity Analysis4, 6, 31.25Reject
12024.33Variadic Learning By Bayesian Nonparametric Deep Embedding5, 4, 40.47Reject
12034.33Asynchronous Sgd Without Gradient Delay For Efficient Distributed Training5, 4, 40.47Reject
12044.33Shrinkage-based Bias-variance Trade-off For Deep Reinforcement Learning4, 4, 50.47Reject
12054.33Unsupervised Latent Tree Induction With Deep Inside-outside Recursive Auto-encoders5, 6, 21.70N/A
12064.33Low-cost Parameterizations Of Deep Convolutional Neural Networks4, 4, 50.47N/A
12074.33Successor Uncertainties: Exploration And Uncertainty In Temporal Difference Learning4, 5, 40.47Reject
12084.33End-to-end Hierarchical Text Classification With Label Assignment Policy5, 4, 40.47Reject
12094.33Generalized Label Propagation Methods For Semi-supervised Learning4, 3, 61.25N/A
12104.33Jumpout: Improved Dropout For Deep Neural Networks With Rectified Linear Units5, 4, 40.47Reject
12114.33The Cakewalk Method5, 4, 40.47Reject
12124.33W2gan: Recovering An Optimal Transport Map With A Gan6, 3, 41.25Reject
12134.33Rating Continuous Actions In Spatial Multi-agent Problems5, 4, 40.47Reject
12144.33Meta-learning To Guide Segmentation7, 3, 31.89Reject
12154.33Stochastic Quantized Activation: To Prevent Overfitting In Fast Adversarial Training4, 5, 40.47Reject
12164.33Dppnet: Approximating Determinantal Point Processes With Deep Networks3, 5, 50.94Reject
12174.33Evolutionary-neural Hybrid Agents For Architecture Search5, 4, 40.47Reject
12184.33Topicgan: Unsupervised Text Generation From Explainable Latent Topics4, 4, 50.47Reject
12194.33Select Via Proxy: Efficient Data Selection For Training Deep Networks4, 4, 50.47Reject
12204.33Deep Perm-set Net: Learn To Predict Sets With Unknown Permutation And Cardinality Using Deep Neural Networks7, 3, 31.89Reject
12214.33In Your Pace: Learning The Right Example At The Right Time5, 4, 40.47Reject
12224.33Modulating Transfer Between Tasks In Gradient-based Meta-learning5, 4, 40.47Reject
12234.33A Preconditioned Accelerated Stochastic Gradient Descent Algorithm4, 4, 50.47Reject
12244.33Adaptive Convolutional Neural Networks5, 4, 40.47Reject
12254.33Inter-bmv: Interpolation With Block Motion Vectors For Fast Semantic Segmentation On Video5, 3, 50.94Reject
12264.33Deeptwist: Learning Model Compression Via Occasional Weight Distortion5, 4, 40.47Reject
12274.33Na3, 5, 50.94N/A
12284.33N/a5, 4, 40.47N/A
12294.33Generative Adversarial Interpolative Autoencoding: Adversarial Training On Latent Space Interpolations Encourages Convex Latent Distributions5, 4, 40.47Reject
12304.33Aciq: Analytical Clipping For Integer Quantization Of Neural Networks4, 4, 50.47Reject
12314.33Explainable Adversarial Learning: Implicit Generative Modeling Of Random Noise During Training For Adversarial Robustness3, 5, 50.94N/A
12324.33Combining Learned Representations For Combinatorial Optimization4, 4, 50.47Reject
12334.33Visual Imitation Learning With Recurrent Siamese Networks4, 4, 50.47Reject
12344.33How To Learn (and How Not To Learn) Multi-hop Reasoning With Memory Networks3, 5, 50.94N/A
12354.33Teaching To Teach By Structured Dark Knowledge4, 3, 61.25Reject
12364.33Confidence Calibration In Deep Neural Networks Through Stochastic Inferences5, 3, 50.94N/A
12374.33Isolating Effects Of Age With Fair Representation Learning When Assessing Dementia4, 4, 50.47N/A
12384.33A Single Shot Pca-driven Analysis Of Network Structure To Remove Redundancy4, 4, 50.47N/A
12394.33Learning To Control Visual Abstractions For Structured Exploration In Deep Reinforcement Learning4, 5, 40.47Reject
12404.33Log Hyperbolic Cosine Loss Improves Variational Auto-encoder4, 4, 50.47Reject
12414.33Locally Linear Unsupervised Feature Selection4, 6, 31.25Reject
12424.33Sequence Modelling With Auto-addressing And Recurrent Memory Integrating Networks4, 4, 50.47Reject
12434.33Learning What To Remember: Long-term Episodic Memory Networks For Learning From Streaming Data5, 4, 40.47Reject
12444.33Universal Attacks On Equivariant Networks4, 4, 50.47Reject
12454.33Incsql: Training Incremental Text-to-sql Parsers With Non-deterministic Oracles4, 6, 31.25N/A
12464.33Provable Defenses Against Spatially Transformed Adversarial Inputs: Impossibility And Possibility Results5, 3, 50.94Reject
12474.33Auto-encoding Knockoff Generator For Fdr Controlled Variable Selection3, 4, 61.25Reject
12484.33Learning Grounded Sentence Representations By Jointly Using Video And Text Information4, 3, 61.25N/A
12494.33Neural Rendering Model: Joint Generation And Prediction For Semi-supervised Learning5, 5, 30.94Reject
12504.33Manifoldnet: A Deep Neural Network For Manifold-valued Data5, 4, 40.47Reject
12514.33Unsupervised Word Discovery With Segmental Neural Language Models4, 3, 61.25Reject
12524.33Network Reparameterization For Unseen Class Categorization5, 3, 50.94N/A
12534.33Deep Geometrical Graph Classification4, 3, 61.25Reject
12544.33Generative Models From The Perspective Of Continual Learning4, 5, 40.47Reject
12554.33Adversarial Examples Are A Natural Consequence Of Test Error In Noise4, 5, 40.47Reject
12564.33Wasserstein Proximal Of Gans3, 6, 41.25Reject
12574.33From Adversarial Training To Generative Adversarial Networks3, 6, 41.25N/A
12584.33Adversarial Decomposition Of Text Representation3, 6, 41.25N/A
12594.33Neuron Hierarchical Networks5, 4, 40.47N/A
12604.33Sample Efficient Deep Neuroevolution In Low Dimensional Latent Space4, 5, 40.47Reject
12614.33Downsampling Leads To Image Memorization In Convolutional Autoencoders3, 5, 50.94Reject
12624.33Online Learning For Supervised Dimension Reduction2, 5, 61.70Reject
12634.33Nice: Noise Injection And Clamping Estimation For Neural Network Quantization4, 5, 40.47Reject
12644.33Assessing Generalization In Deep Reinforcement Learning3, 5, 50.94Reject
12654.33Do Language Models Have Common Sense?5, 4, 40.47Reject
12664.33Efficient Convolutional Neural Network Training With Direct Feedback Alignment4, 4, 50.47Reject
12674.33Q-map: A Convolutional Approach For Goal-oriented Reinforcement Learning5, 4, 40.47Reject
12684.33Deep Ensemble Bayesian Active Learning : Adressing The Mode Collapse Issue In Monte Carlo Dropout Via Ensembles4, 4, 50.47Reject
12694.33Salsa-text : Self Attentive Latent Space Based Adversarial Text Generation4, 4, 50.47N/A
12704.33Pie: Pseudo-invertible Encoder3, 5, 50.94Reject
12714.33On Inductive Biases In Deep Reinforcement Learning3, 3, 71.89Reject
12724.33Na5, 4, 40.47N/A
12734.33Dvolver: Efficient Pareto-optimal Neural Network Architecture Search4, 5, 40.47Reject
12744.33Dual Learning: Theoretical Study And Algorithmic Extensions6, 2, 51.70Reject
12754.33Gradient-based Learning For F-measure And Other Performance Metrics5, 3, 50.94Reject
12764.33Robust Text Classifier On Test-time Budgets4, 4, 50.47N/A
12774.33Recycling The Discriminator For Improving The Inference Mapping Of Gan3, 3, 71.89Reject
12784.33Shamann: Shared Memory Augmented Neural Networks4, 5, 40.47Reject
12794.33Recovering The Lowest Layer Of Deep Networks With High Threshold Activations4, 5, 40.47Reject
12804.33Exploration By Uncertainty In Reward Space5, 5, 30.94Reject
12814.33Modulated Variational Auto-encoders For Many-to-many Musical Timbre Transfer5, 5, 30.94Reject
12824.33On Generalization Bounds Of A Family Of Recurrent Neural Networks4, 6, 31.25Reject
12834.33Feature Matters: A Stage-by-stage Approach For Task Independent Knowledge Transfer5, 4, 40.47N/A
12844.33Sentence Encoding With Tree-constrained Relation Networks3, 5, 50.94Reject
12854.25A Priori Estimates Of The Generalization Error For Two-layer Neural Networks4, 4, 4, 50.43Reject
12864.25Understanding The Asymptotic Performance Of Model-based Rl Methods5, 6, 4, 21.48Reject
12874.25Discovering General-purpose Active Learning Strategies5, 4, 4, 40.43Reject
12884.25On Meaning-preserving Adversarial Perturbations For Sequence-to-sequence Models4, 4, 3, 61.09Reject
12894.25Characterizing The Accuracy/complexity Landscape Of Explanations Of Deep Networks Through Knowledge Extraction4, 4, 4, 50.43Reject
12904.25Countdown Regression: Sharp And Calibrated Survival Predictions4, 4, 4, 50.43Reject
12914.00Neural Regression Tree5, 3, 40.82Reject
12924.00The Effectiveness Of Layer-by-layer Training Using The Information Bottleneck Principle5, 2, 51.41Reject
12934.00S-system, Geometry, Learning, And Optimization: A Theory Of Neural Networks4, 40.00Reject
12944.00Learning Latent Semantic Representation From Pre-defined Generative Model5, 3, 40.82Reject
12954.00Fatty And Skinny: A Joint Training Method Of Watermark Encoder And Decoder4, 4, 40.00N/A
12964.00Reconciling Feature-reuse And Overfitting In Densenet With Specialized Dropout5, 3, 40.82Reject
12974.00Functional Bayesian Neural Networks For Model Uncertainty Quantification3, 4, 50.82Reject
12984.00Empirically Characterizing Overparameterization Impact On Convergence5, 4, 30.82Reject
12994.00Exploration Using Distributional Rl And Ucb4, 4, 40.00N/A
13004.00Revisting Negative Transfer Using Adversarial Learning4, 2, 61.63Reject
13014.00Distilled Agent Dqn For Provable Adversarial Robustness5, 3, 40.82Reject
13024.00Reinforced Pipeline Optimization: Behaving Optimally With Non-differentiabilities4, 5, 30.82Reject
13034.00Generalized Capsule Networks With Trainable Routing Procedure5, 3, 40.82Reject
13044.00Learning From Noisy Demonstration Sets Via Meta-learned Suitability Assessor4, 4, 40.00Reject
13054.00Latent Domain Transfer: Crossing Modalities With Bridging Autoencoders4, 4, 40.00Reject
13064.00Complexity Of Training Relu Neural Networks3, 5, 40.82Reject
13074.00Learning To Search Efficient Densenet With Layer-wise Pruning4, 4, 40.00Reject
13084.00Conditional Inference In Pre-trained Variational Autoencoders Via Cross-coding4, 4, 40.00Reject
13094.00The Wisdom Of The Crowd: Reliable Deep Reinforcement Learning Through Ensembles Of Q-functions4, 5, 30.82Reject
13104.00Guaranteed Recovery Of One-hidden-layer Neural Networks Via Cross Entropy3, 4, 50.82Reject
13114.00D2ke: From Distance To Kernel And Embedding Via Random Features For Structured Inputs4, 3, 50.82N/A
13124.00Graph Generation Via Scattering4, 4, 40.00Reject
13134.00Classification Of Building Noise Type/position Via Supervised Learning4, 4, 40.00N/A
13144.00Explaining Neural Networks Semantically And Quantitatively4, 4, 40.00N/A
13154.00Look Ma, No Gans! Image Transformation With Modifae3, 4, 50.82Reject
13164.00The Forward-backward Embedding Of Directed Graphs5, 3, 40.82Reject
13174.00Efficient Exploration Through Bayesian Deep Q-networks6, 4, 4, 21.41Reject
13184.00Hc-net: Memory-based Incremental Dual-network System For Continual Learning4, 4, 40.00Reject
13194.00Multi-task Learning For Semantic Parsing With Cross-domain Sketch3, 4, 50.82Reject
13204.00Rnns With Private And Shared Representations For Semi-supervised Sequence Learning3, 5, 40.82N/A
13214.00Na6, 2, 41.63N/A
13224.00The Missing Ingredient In Zero-shot Neural Machine Translation5, 4, 30.82N/A
13234.00Evading Defenses To Transferable Adversarial Examples By Mitigating Attention Shift4, 4, 40.00N/A
13244.00Applications Of Gaussian Processes In Finance4, 5, 30.82N/A
13254.00Evaluating Gans Via Duality4, 3, 50.82Reject
13264.00Neural Network Cost Landscapes As Quantum States5, 3, 40.82Reject
13274.00Deep Adversarial Forward Model4, 4, 40.00Reject
13284.00In Search Of Theoretically Grounded Pruning4, 3, 50.82N/A
13294.00Mol-cyclegan - A Generative Model For Molecular Optimization4, 4, 40.00Reject
13304.00Overlapping Community Detection With Graph Neural Networks5, 3, 40.82Reject
13314.00Chaingan: A Sequential Approach To Gans4, 4, 40.00Reject
13324.00Constraining Action Sequences With Formal Languages For Deep Reinforcement Learning5, 3, 40.82Reject
13334.00Trajectory Vae For Multi-modal Imitation4, 4, 40.00Reject
13344.00Improving Machine Classification Using Human Uncertainty Measurements6, 3, 31.41Reject
13354.00Differentially Private Federated Learning: A Client Level Perspective4, 4, 40.00Reject
13364.00N/a4, 5, 30.82N/A
13374.00Exploiting Invariant Structures For Compression In Neural Networks4, 4, 40.00N/A
13384.00Continual Learning Via Explicit Structure Learning4, 4, 40.00Reject
13394.00Difference-seeking Generative Adversarial Network5, 4, 30.82Reject
13404.00Assumption Questioning: Latent Copying And Reward Exploitation In Question Generation4, 3, 50.82Reject
13414.00Second-order Adversarial Attack And Certifiable Robustness4, 5, 30.82Reject
13424.00A Multi-modal One-class Generative Adversarial Network For Anomaly Detection In Manufacturing3, 4, 50.82Reject
13434.00Deep Generative Models For Learning Coherent Latent Representations From Multi-modal Data4, 4, 40.00Reject
13444.00Sequenced-replacement Sampling For Deep Learning3, 5, 40.82Reject
13454.00Sample-efficient Policy Learning In Multi-agent Reinforcement Learning Via Meta-learning4, 4, 40.00Reject
13464.00Overfitting Detection Of Deep Neural Networks Without A Hold Out Set4, 5, 30.82Reject
13474.00On The Selection Of Initialization And Activation Function For Deep Neural Networks3, 4, 50.82Reject
13484.00Constrained Bayesian Optimization For Automatic Chemical Design3, 4, 50.82Reject
13494.00Dual Importance Weight Gan4, 3, 50.82N/A
13504.00Robustness And Equivariance Of Neural Networks3, 4, 50.82Reject
13514.00Incremental Hierarchical Reinforcement Learning With Multitask Lmdps3, 4, 50.82Reject
13524.00Cosine Similarity-based Adversarial Process4, 3, 50.82N/A
13534.00Training Hard-threshold Networks With Combinatorial Search In A Discrete Target Propagation Setting3, 4, 50.82Reject
13544.00On The Use Of Convolutional Auto-encoder For Incremental Classifier Learning In Context Aware Advertisement5, 4, 30.82Reject
13554.00Exploration Of Efficient On-device Acoustic Modeling With Neural Networks4, 4, 40.00Reject
13564.00Microgan: Promoting Variety Through Microbatch Discrimination3, 3, 61.41Reject
13574.00Better Accuracy With Quantified Privacy: Representations Learned Via Reconstructive Adversarial Network4, 5, 30.82Reject
13584.00Merci: A New Metric To Evaluate The Correlation Between Predictive Uncertainty And True Error4, 5, 30.82Reject
13594.00Deep Processing Of Structured Data4, 4, 40.00Reject
13604.00Iterative Binary Decisions4, 4, 40.00N/A
13614.00Understanding Opportunities For Efficiency In Single-image Super Resolution Networks4, 5, 30.82Reject
13624.00Unsupervised Convolutional Neural Networks For Accurate Video Frame Interpolation With Integration Of Motion Components3, 5, 40.82N/A
13634.00Learning Representations In Model-free Hierarchical Reinforcement Learning5, 4, 30.82Reject
13644.00Accidental Exploration Through Value Predictors4, 5, 30.82Reject
13654.00Language Modeling With Graph Temporal Convolutional Networks4, 4, 40.00Reject
13664.00Overcoming Catastrophic Forgetting Through Weight Consolidation And Long-term Memory4, 4, 40.00Reject
13674.00Modular Deep Probabilistic Programming3, 4, 50.82Reject
13684.00Relational Graph Attention Networks4, 4, 40.00Reject
13694.00Towards More Theoretically-grounded Particle Optimization Sampling For Deep Learning5, 4, 30.82Reject
13704.00Layerwise Recurrent Autoencoder For General Real-world Traffic Flow Forecasting4, 5, 30.82Reject
13714.00Activity Regularization For Continual Learning4, 4, 40.00Reject
13724.00Dynamic Pricing On E-commerce Platform With Deep Reinforcement Learning4, 4, 40.00Reject
13734.00Defactor: Differentiable Edge Factorization-based Probabilistic Graph Generation3, 5, 40.82Reject
13744.00Data Poisoning Attack Against Unsupervised Node Embedding Methods4, 4, 40.00N/A
13754.00Distributionally Robust Optimization Leads To Better Generalization: On Sgd And Beyond3, 4, 50.82Reject
13764.00Uainets: From Unsupervised To Active Deep Anomaly Detection4, 5, 30.82Reject
13774.00Implicit Maximum Likelihood Estimation4, 3, 50.82Reject
13784.00Prob2vec: Mathematical Semantic Embedding For Problem Retrieval In Adaptive Tutoring3, 5, 40.82Reject
13794.00Hyper-regularization: An Adaptive Choice For The Learning Rate In Gradient Descent4, 4, 40.00Reject
13804.00A Teacher Student Network For Faster Video Classification4, 4, 40.00N/A
13814.00Deepström Networks4, 5, 30.82N/A
13824.00Universal Discriminative Quantum Neural Networks5, 5, 21.41Reject
13834.00Morpho-mnist: Quantitative Assessment And Diagnostics For Representation Learning3, 5, 40.82Reject
13844.00Uncertainty-guided Lifelong Learning In Bayesian Networks4, 4, 40.00Reject
13854.00Distinguishability Of Adversarial Examples4, 4, 40.00Reject
13864.00Pearl: Prototype Learning Via Rule Lists5, 3, 40.82Reject
13874.00Nuts: Network For Unsupervised Telegraphic Summarization4, 4, 40.00Reject
13884.00Unsupervised Exploration With Deep Model-based Reinforcement Learning4, 4, 40.00Reject
13894.00Adversarial Attacks For Optical Flow-based Action Recognition Classifiers4, 3, 50.82Reject
13904.00Found By Nemo: Unsupervised Object Detection From Negative Examples And Motion5, 3, 40.82N/A
13914.00On The Statistical And Information Theoretical Characteristics Of Dnn Representations5, 4, 30.82Reject
13924.00Decoupling Feature Extraction From Policy Learning: Assessing Benefits Of State Representation Learning In Goal Based Robotics5, 3, 40.82Reject
13934.00Ain't Nobody Got Time For Coding: Structure-aware Program Synthesis From Natural Language4, 4, 40.00Reject
13944.00On The Trajectory Of Stochastic Gradient Descent In The Information Plane4, 6, 21.63Reject
13954.00Polar Prototype Networks5, 3, 40.82Reject
13963.75The Body Is Not A Given: Joint Agent Policy Learning And Morphology Evolution4, 4, 3, 40.43N/A
13973.75Lsh Microbatches For Stochastic Gradients: Value In Rearrangement4, 4, 3, 40.43Reject
13983.67Fake Sentence Detection As A Training Task For Sentence Encoding5, 3, 30.94Reject
13993.67Inhibited Softmax For Uncertainty Estimation In Neural Networks4, 4, 30.47N/A
14003.67Parametrizing Fully Convolutional Nets With A Single High-order Tensor4, 3, 40.47N/A
14013.67A Walk With Sgd: How Sgd Explores Regions Of Deep Network Loss?4, 4, 30.47Reject
14023.67Interpretable Convolutional Filter Pruning4, 4, 30.47Reject
14033.67A Fully Automated Periodicity Detection In Time Series3, 5, 30.94Reject
14043.67Geometric Augmentation For Robust Neural Network Classifiers4, 4, 30.47Reject
14053.67Optimized Gated Deep Learning Architectures For Sensor Fusion4, 4, 30.47Reject
14063.67Graph Spectral Regularization For Neural Network Interpretability4, 3, 40.47Reject
14073.67Synthnet: Learning Synthesizers End-to-end4, 4, 30.47Reject
14083.67Question Generation Using A Scratchpad Encoder4, 3, 40.47Reject
14093.67Spectral Convolutional Networks On Hierarchical Multigraphs4, 3, 40.47N/A
14103.67Feature Transformers: A Unified Representation Learning Framework For Lifelong Learning4, 3, 40.47Reject
14113.67Learning Robust, Transferable Sentence Representations For Text Classification4, 3, 40.47N/A
14123.67Using Deep Siamese Neural Networks To Speed Up Natural Products Research4, 3, 40.47Reject
14133.67Unsupervised Video-to-video Translation3, 4, 40.47Reject
14143.67Bilingual-gan: Neural Text Generation And Neural Machine Translation As Two Sides Of The Same Coin3, 4, 40.47N/A
14153.67Optimizing For Generalization In Machine Learning With Cross-validation Gradients5, 2, 41.25Reject
14163.67Radial Basis Feature Transformation To Arm Cnns Against Adversarial Attacks4, 4, 30.47Reject
14173.67Feature Attribution As Feature Selection4, 4, 30.47Reject
14183.67Filter Training And Maximum Response: Classification Via Discerning2, 3, 61.70Reject
14193.67Unsupervised Monocular Depth Estimation With Clear Boundaries4, 4, 30.47N/A
14203.67Beyond Games: Bringing Exploration To Robots In Real-world3, 3, 50.94Reject
14213.67Withdrawn4, 4, 30.47N/A
14223.67Prior Networks For Detection Of Adversarial Attacks3, 4, 40.47Reject
14233.67Accelerating First Order Optimization Algorithms3, 4, 40.47Reject
14243.67Mixture Of Pre-processing Experts Model For Noise Robust Deep Learning On Resource Constrained Platforms3, 4, 40.47Reject
14253.67Text Embeddings For Retrieval From A Large Knowledge Base3, 3, 50.94Reject
14263.67Discrete Structural Planning For Generating Diverse Translations2, 4, 51.25Reject
14273.67Structured Prediction Using Cgans With Fusion Discriminator5, 3, 30.94Reject
14283.67Na4, 4, 30.47N/A
14293.67Normalization Gradients Are Least-squares Residuals4, 4, 30.47Reject
14303.67Deep Hierarchical Model For Hierarchical Selective Classification And Zero Shot Learning4, 5, 21.25Reject
14313.67Graph Learning Network: A Structure Learning Algorithm4, 3, 40.47Reject
14323.67Quantile Regression Reinforcement Learning With State Aligned Vector Rewards4, 3, 40.47N/A
14333.67Towards The Latent Transcriptome4, 2, 51.25Reject
14343.67Explaining Alphago: Interpreting Contextual Effects In Neural Networks3, 4, 40.47N/A
14353.67Dyncnn: An Effective Dynamic Architecture On Convolutional Neural Network For Surveillance Videos3, 4, 40.47Reject
14363.67D-gan: Divergent Generative Adversarial Network For Positive Unlabeled Learning And Counter-examples Generation3, 5, 30.94Reject
14373.67Using Word Embeddings To Explore The Learned Representations Of Convolutional Neural Networks3, 4, 40.47Reject
14383.67Automatic Generation Of Object Shapes With Desired Functionalities5, 3, 30.94Reject
14393.67Delibgan: Coarse-to-fine Text Generation Via Adversarial Network4, 3, 40.47Reject
14403.67Rethinking Self-driving : Multi -task Knowledge For Better Generalization And Accident Explanation Ability4, 4, 30.47Reject
14413.67Gradmix: Multi-source Transfer Across Domains And Tasks5, 3, 30.94N/A
14423.67Polycnn: Learning Seed Convolutional Filters3, 4, 40.47N/A
14433.67Why Do Neural Response Generation Models Prefer Universal Replies?3, 7, 12.49Reject
14443.67Residual Networks Classify Inputs Based On Their Neural Transient Dynamics4, 2, 51.25Reject
14453.67Object-contrastive Networks: Unsupervised Object Representations3, 3, 50.94N/A
14463.67Latent Transformations For Object View Points Synthesis2, 4, 51.25N/A
14473.67An Attention-based Model For Learning Dynamic Interaction Networks4, 3, 40.47N/A
14483.67Hierarchical Attention: What Really Counts In Various Nlp Tasks4, 3, 40.47Reject
14493.67Modeling Evolution Of Language Through Time With Neural Networks3, 4, 40.47N/A
14503.67Contextual Recurrent Convolutional Model For Robust Visual Learning4, 3, 40.47Reject
14513.67Generating Images From Sounds Using Multimodal Features And Gans3, 4, 40.47Reject
14523.67Differentiable Greedy Networks5, 2, 41.25N/A
14533.67Learning Agents With Prioritization And Parameter Noise In Continuous State And Action Space3, 4, 40.47Reject
14543.67Optimization On Multiple Manifolds7, 1, 32.49Reject
14553.67Unsupervised One-to-many Image Translation3, 4, 40.47Reject
14563.67Adversarially Robust Training Through Structured Gradient Regularization4, 4, 30.47Reject
14573.67Distributed Deep Policy Gradient For Competitive Adversarial Environment4, 4, 30.47N/A
14583.67Diminishing Batch Normalization4, 3, 40.47Reject
14593.67Efficient Federated Learning Via Variational Dropout4, 4, 30.47N/A
14603.67Pcnn: Environment Adaptive Model Without Finetuning4, 3, 40.47Reject
14613.67Localized Random Projections Challenge Benchmarks For Bio-plausible Deep Learning5, 3, 30.94Reject
14623.67Riemannian Stochastic Gradient Descent For Tensor-train Recurrent Neural Networks4, 4, 30.47Reject
14633.67Imposing Category Trees Onto Word-embeddings Using A Geometric Construction4, 4, 30.47Accept (Poster)
14643.67Few-shot Intent Inference Via Meta-inverse Reinforcement Learning3, 4, 40.47Reject
14653.67Controlling Over-generalization And Its Effect On Adversarial Examples Detection And Generation4, 4, 30.47Reject
14663.67Image Score: How To Select Useful Samples4, 4, 30.47Reject
14673.50Bamboo: Ball-shape Data Augmentation Against Adversarial Attacks From All Directions4, 30.50N/A
14683.50Learning To Reinforcement Learn By Imitation4, 3, 2, 51.12Reject
14693.50Mctsbug: Generating Adversarial Text Sequences Via Monte Carlo Tree Search And Homoglyph Attack3, 40.50N/A
14703.33Major-minor Lstms For Word-level Language Model3, 4, 30.47N/A
14713.33Human Action Recognition Based On Spatial-temporal Attention4, 3, 30.47Reject
14723.33Generative Model Based On Minimizing Exact Empirical Wasserstein Distance5, 2, 31.25Reject
14733.33Neural Network Regression With Beta, Dirichlet, And Dirichlet-multinomial Outputs3, 3, 40.47Reject
14743.33A Quantifiable Testing Of Global Translational Invariance In Convolutional And Capsule Networks3, 4, 30.47Reject
14753.33Na4, 5, 11.70N/A
14763.33Interpreting Layered Neural Networks Via Hierarchical Modular Representation4, 3, 30.47Reject
14773.33Attack Graph Convolutional Networks By Adding Fake Nodes4, 3, 30.47Reject
14783.33Visualizing And Understanding The Semantics Of Embedding Spaces Via Algebraic Formulae3, 3, 40.47Reject
14793.33Combining Adaptive Algorithms And Hypergradient Method: A Performance And Robustness Study3, 3, 40.47Reject
14803.33Logit Regularization Methods For Adversarial Robustness3, 5, 21.25N/A
14813.33Linearizing Visual Processes With Deep Generative Models3, 3, 40.47N/A
14823.33Associate Normalization3, 5, 21.25N/A
14833.33Understanding And Improving Sequence-labeling Ner With Self-attentive Lstms3, 3, 40.47N/A
14843.33Step-wise Sensitivity Analysis: Identifying Partially Distributed Representations For Interpretable Deep Learning3, 4, 30.47Reject
14853.33Bigsage: Unsupervised Inductive Representation Learning Of Graph Via Bi-attended Sampling And Global-biased Aggregating2, 4, 40.94Reject
14863.33Learning Spatio-temporal Representations Using Spike-based Backpropagation3, 4, 30.47N/A
14873.33Featurized Bidirectional Gan: Adversarial Defense Via Adversarially Learned Semantic Inference3, 4, 30.47Reject
14883.33Iea: Inner Ensemble Average Within A Convolutional Neural Network4, 2, 40.94Reject
14893.33Geometric Operator Convolutional Neural Network2, 5, 31.25N/A
14903.33Neural Random Projections For Language Modelling3, 4, 30.47Reject
14913.33Empirical Study Of Easy And Hard Examples In Cnn Training3, 4, 30.47Reject
14923.33Large-scale Classification Of Structured Objects Using A Crf With Deep Class Embedding3, 3, 40.47Reject
14933.33Non-synergistic Variational Autoencoders3, 4, 30.47Reject
14943.33Detecting Topological Defects In 2d Active Nematics Using Convolutional Neural Networks4, 4, 20.94Reject
14953.33Deconfounding Reinforcement Learning In Observational Settings4, 4, 20.94Reject
14963.33Learning Powerful Policies And Better Dynamics Models By Encouraging Consistency3, 2, 51.25Reject
14973.33Offline Deep Models Calibration With Bayesian Neural Networks4, 3, 30.47Reject
14983.33She2: Stochastic Hamiltonian Exploration And Exploitation For Derivative-free Optimization4, 3, 30.47Reject
14993.33Gradient Acceleration In Activation Functions5, 2, 31.25Reject
15003.33Behavior Module In Neural Networks3, 3, 40.47Reject
15013.33Learning And Data Selection In Big Datasets4, 3, 30.47N/A
15023.33Multi-scale Stacked Hourglass Network For Human Pose Estimation3, 4, 30.47Reject
15033.33Neural Distribution Learning For Generalized Time-to-event Prediction4, 3, 30.47Reject
15043.33Encoder Discriminator Networks For Unsupervised Representation Learning3, 4, 30.47N/A
15053.00Hr-td: A Regularized Td Method To Avoid Over-generalization4, 3, 20.82Reject
15063.00Spamhmm: Sparse Mixture Of Hidden Markov Models For Graph Connected Entities3, 3, 30.00N/A
15073.00Real-time Neural-based Input Method3, 3, 30.00Reject
15083.00Learn From Neighbour: A Curriculum That Train Low Weighted Samples By Imitating2, 3, 40.82Reject
15093.00Variational Autoencoders For Text Modeling Without Weakening The Decoder4, 1, 41.41N/A
15103.00An Exhaustive Analysis Of Lazy Vs. Eager Learning Methods For Real-estate Property Investment3, 4, 20.82Reject
15113.00A Non-linear Theory For Sentence Embedding3, 3, 30.00Reject
15123.00Geometry Of Deep Convolutional Networks2, 4, 30.82N/A
15133.00Probabilistic Program Induction For Intuitive Physics Game Play3, 4, 20.82Reject
15143.00A Self-supervised Method For Mapping Human Instructions To Robot Policies4, 3, 20.82Reject
15153.00Mapping The Hyponymy Relation Of Wordnet Onto Vector Spaces3, 3, 30.00Reject
15163.00Learning With Reflective Likelihoods4, 2, 30.82Reject
15173.00Attentive Explainability For Patient Temporal Embedding4, 3, 20.82Reject
15183.00Generative Model For Material Irradiation Experiments Based On Prior Knowledge And Attention Mechanism3, 30.00N/A
15193.00An Analysis Of Composite Neural Network Performance From Function Composition Perspective3, 3, 30.00Reject
15203.00A Forensic Representation To Detect Non-trivial Image Duplicates, And How It Applies To Semantic Segmentation4, 3, 20.82N/A
15213.00Calibration Of Neural Network Logit Vectors To Combat Adversarial Attacks3, 2, 40.82Reject
15223.00Handling Concept Drift In Wifi-based Indoor Localization Using Representation Learning2, 3, 40.82N/A
15233.00Classification In The Dark Using Tactile Exploration4, 3, 20.82Reject
15243.00End-to-end Multi-lingual Multi-speaker Speech Recognition3, 3, 30.00Reject
15253.00Nonlinear Channels Aggregation Networks For Deep Action Recognition3, 3, 30.00N/A
15263.00From Amortised To Memoised Inference: Combining Wake-sleep And Variational-bayes For Unsupervised Few-shot Program Learning3, 3, 30.00N/A
15273.00Dopamine: A Research Framework For Deep Reinforcement Learning3, 3, 30.00Reject
15283.00Hybrid Policies Using Inverse Rewards For Reinforcement Learning3, 2, 40.82Reject
15293.00From Deep Learning To Deep Deducing: Automatically Tracking Down Nash Equilibrium Through Autonomous Neural Agent, A Possible Missing Step Toward General A.i.3, 2, 40.82Reject
15303.00Uncertainty In Multitask Transfer Learning3, 2, 40.82Reject
15313.00Reneg And Backseat Driver: Learning From Demonstration With Continuous Human Feedback3, 4, 20.82Reject
15323.00A Rate-distortion Theory Of Adversarial Examples4, 3, 20.82Reject
15333.00Attention Incorporate Network: A Network Can Adapt Various Data Size3, 4, 20.82Reject
15343.00Learning Of Sophisticated Curriculums By Viewing Them As Graphs Over Tasks3, 2, 40.82N/A
15353.00Irda Method For Sparse Convolutional Neural Networks3, 3, 30.00Reject
15363.00Evaluation Methodology For Attacks Against Confidence Thresholding Models2, 3, 40.82Reject
15373.00Feature Quantization For Parsimonious And Interpretable Predictive Models2, 3, 40.82Reject
15383.00Stacking For Transfer Learning3, 4, 20.82Reject
15393.00One Bit Matters: Understanding Adversarial Examples As The Abuse Of Redundancy3, 3, 30.00N/A
15403.00Knowledge Distill Via Learning Neuron Manifold5, 1, 31.63N/A
15412.75Predictive Local Smoothness For Stochastic Gradient Methods2, 3, 2, 40.83Reject
15422.67Variational Sgd: Dropout , Generalization And Critical Point At The End Of Convexity4, 2, 20.94Reject
15432.67Weak Contraction Mapping And Optimization3, 1, 41.25Reject
15442.67Learning Goal-conditioned Value Functions With One-step Path Rewards Rather Than Goal-rewards4, 1, 31.25Reject
15452.67Multiple Encoder-decoders Net For Lane Detection2, 2, 40.94Reject
15462.67Explaining Adversarial Examples With Knowledge Representation3, 3, 20.47Reject
15472.67End-to-end Learning Of Video Compression Using Spatio-temporal Autoencoders3, 3, 20.47Reject
15482.67A Case Study On Optimal Deep Learning Model For Uavs3, 3, 20.47Reject
15492.67Decoupling Gating From Linearity3, 2, 30.47Reject
15502.67Happier: Hierarchical Polyphonic Music Generative Rnn2, 3, 30.47Reject
15512.67Faster Training By Selecting Samples Using Embeddings3, 3, 20.47Reject
15522.67A Bird's Eye View On Coherence, And A Worm's Eye View On Cohesion2, 2, 40.94Reject
15532.67Exponentially Decaying Flows For Optimization In Deep Learning3, 3, 20.47N/A
15542.50A Solution To China Competitive Poker Using Deep Learning3, 20.50Reject
15552.50Psychophysical Vs. Learnt Texture Representations In Novelty Detection3, 3, 3, 10.87Reject
15562.33Hierarchical Deep Reinforcement Learning Agent With Counter Self-play On Competitive Games3, 2, 20.47N/A
15572.33Training Variational Auto Encoders With Discrete Latent Representations Using Importance Sampling3, 1, 30.94Reject
15582.33Vectorization Methods In Recommender System2, 2, 30.47Reject
15592.33Generating Text Through Adversarial Training Using Skip-thought Vectors3, 2, 20.47N/A
15602.33Deli-fisher Gan: Stable And Efficient Image Generation With Structured Latent Generative Space2, 2, 30.47Reject
15612.33Pixel Chem: A Representation For Predicting Material Properties With Neural Network3, 1, 30.94Reject
15622.33Advanced Neuroevolution: A Gradient-free Algorithm To Train Deep Neural Networks1, 1, 51.89N/A
15632.25A Synaptic Neural Network And Synapse Learning2, 3, 2, 20.43Reject
15642.00Hierarchical Bayesian Modeling For Clustering Sparse Sequences In The Context Of Group Profiling2, 2, 3, 1, 20.63Reject
15651.50Object Detection Deep Learning Networks For Optical Character Recognition1, 2, 1, 20.50Reject
1566nanPass: Phased Attentive State Space Modeling Of Disease Progression TrajectoriesnanN/A
1567nanExploring Deep Learning Using Information Theory Tools And Patch OrderingnanN/A
1568nanTeaching Machine How To Think By Natural Language: A Study On Machine Reading ComprehensionnanN/A
1569nanStatistical Characterization Of Deep Neural Networks And Their SensitivitynanN/A
1570nanIs Pgd-adversarial Training Necessary? Alternative Training Via A Soft-quantization Network With Noisy-natural Samples OnlynanN/A
1571nanIsonetry : Geometry Of Critical Initializations And TrainingnanN/A
1572nanScaling Up Deep Learning For Pde-based ModelsnanN/A
1573nanAdversarial Defense Via Data Dependent Activation Function And Total Variation MinimizationnanN/A
1574nanProgram Synthesis With Learned Code IdiomsnanN/A
1575nanShow, Attend And Translate: Unsupervised Image Translation With Self-regularization And AttentionnanN/A
1576nanConfidence-based Graph Convolutional Networks For Semi-supervised LearningnanN/A
1577nanNeural Network Bandit Learning By Last Layer MarginalizationnanN/A
1578nanNeural Collobrative NetworksnanN/A
1579nanExploration In Policy Mirror DescentnanN/A