| Parameter-Efficient Masking Networks | NeurIPS | W | PyTorch(Author) |
| "Lossless" Compression of Deep Neural Networks: A High-dimensional Neural Tangent Kernel Approach | NeurIPS | W | PyTorch(Author) |
| Losses Can Be Blessings: Routing Self-Supervised Speech Representations Towards Efficient Multilingual and Multitask Speech Processing | NeurIPS | W | PyTorch(Author) |
| Models Out of Line: A Fourier Lens on Distribution Shift Robustness | NeurIPS | W | PyTorch(Author) |
| Robust Binary Models by Pruning Randomly-initialized Networks | NeurIPS | W | PyTorch(Author) |
| Rare Gems: Finding Lottery Tickets at Initialization | NeurIPS | W | PyTorch(Author) |
| Optimal Brain Compression: A Framework for Accurate Post-Training Quantization and Pruning | NeurIPS | W | PyTorch(Author) |
| Pruning’s Effect on Generalization Through the Lens of Training and Regularization | NeurIPS | W | - |
| Back Razor: Memory-Efficient Transfer Learning by Self-Sparsified Backpropagation | NeurIPS | W | PyTorch(Author) |
| Analyzing Lottery Ticket Hypothesis from PAC-Bayesian Theory Perspective | NeurIPS | W | - |
| Sparse Winning Tickets are Data-Efficient Image Recognizers | NeurIPS | W | PyTorch(Author) |
| Lottery Tickets on a Data Diet: Finding Initializations with Sparse Trainable Networks | NeurIPS | W | - |
| Weighted Mutual Learning with Diversity-Driven Model Compression | NeurIPS | F | - |
| SInGE: Sparsity via Integrated Gradients Estimation of Neuron Relevance | NeurIPS | F | - |
| Data-Efficient Structured Pruning via Submodular Optimization | NeurIPS | F | PyTorch(Author) |
| Structural Pruning via Latency-Saliency Knapsack | NeurIPS | F | PyTorch(Author) |
| Recall Distortion in Neural Network Pruning and the Undecayed Pruning Algorithm | NeurIPS | WF | - |
| Pruning Neural Networks via Coresets and Convex Geometry: Towards No Assumptions | NeurIPS | WF | - |
| Controlled Sparsity via Constrained Optimization or: How I Learned to Stop Tuning Penalties and Love Constraints | NeurIPS | WF | PyTorch(Author) |
| Advancing Model Pruning via Bi-level Optimization | NeurIPS | WF | PyTorch(Author) |
| Emergence of Hierarchical Layers in a Single Sheet of Self-Organizing Spiking Neurons | NeurIPS | S | - |
| CryptoGCN: Fast and Scalable Homomorphically Encrypted Graph Convolutional Network Inference | NeurIPS | S | PyTorch(Author)(Releasing) |
| Transform Once: Efficient Operator Learning in Frequency Domain | NeurIPS | Other | PyTorch(Author)(Releasing) |
| Most Activation Functions Can Win the Lottery Without Excessive Depth | NeurIPS | Other | PyTorch(Author) |
| Pruning has a disparate impact on model accuracy | NeurIPS | Other | - |
| Model Preserving Compression for Neural Networks | NeurIPS | Other | PyTorch(Author) |
| Prune Your Model Before Distill It | ECCV | W | PyTorch(Author) |
| FedLTN: Federated Learning for Sparse and Personalized Lottery Ticket Networks | ECCV | W | - |
| FairGRAPE: Fairness-Aware GRAdient Pruning mEthod for Face Attribute Classification | ECCV | F | PyTorch(Author) |
| SuperTickets: Drawing Task-Agnostic Lottery Tickets from Supernets via Jointly Architecture Searching and Parameter Pruning | ECCV | F | PyTorch(Author) |
| Ensemble Knowledge Guided Sub-network Search and Fine-Tuning for Filter Pruning | ECCV | F | PyTorch(Author) |
| CPrune: Compiler-Informed Model Pruning for Efficient Target-Aware DNN Execution | ECCV | F | PyTorch(Author) |
| Soft Masking for Cost-Constrained Channel Pruning | ECCV | F | PyTorch(Author) |
| Filter Pruning via Feature Discrimination in Deep Neural Networks | ECCV | F | - |
| Disentangled Differentiable Network Pruning | ECCV | F | - |
| Interpretations Steered Network Pruning via Amortized Inferred Saliency Maps | ECCV | F | PyTorch(Author) |
| Bayesian Optimization with Clustering and Rollback for CNN Auto Pruning | ECCV | F | PyTorch(Author) |
| Multi-granularity Pruning for Model Acceleration on Mobile Devices | ECCV | WF | - |
| Exploring Lottery Ticket Hypothesis in Spiking Neural Networks | ECCV | S | PyTorch(Author) |
| Towards Ultra Low Latency Spiking Neural Networks for Vision and Sequential Tasks Using Temporal Pruning | ECCV | S | - |
| Recent Advances on Neural Network Pruning at Initialization | IJCAI | W | PyTorch(Author) |
| FedDUAP: Federated Learning with Dynamic Update and Adaptive Pruning Using Shared Data on the Server | IJCAI | F | - |
| On the Channel Pruning using Graph Convolution Network for Convolutional Neural Network Acceleration | IJCAI | F | - |
| Pruning-as-Search: Efficient Neural Architecture Search via Channel Pruning and Structural Reparameterization | IJCAI | F | - |
| Neural Network Pruning by Cooperative Coevolution | IJCAI | F | - |
| SPDY: Accurate Pruning with Speedup Guarantees | ICML | W | PyTorch(Author) |
| Sparse Double Descent: Where Network Pruning Aggravates Overfitting | ICML | W | PyTorch(Author) |
| The Combinatorial Brain Surgeon: Pruning Weights That Cancel One Another in Neural Networks | ICML | W | PyTorch(Author) |
| Linearity Grafting: Relaxed Neuron Pruning Helps Certifiable Robustness | ICML | F | PyTorch(Author) |
| Winning the Lottery Ahead of Time: Efficient Early Network Pruning | ICML | F | PyTorch(Author) |
| Topology-Aware Network Pruning using Multi-stage Graph Embedding and Reinforcement Learning | ICML | F | PyTorch(Author) |
| Fast Lossless Neural Compression with Integer-Only Discrete Flows | ICML | F | PyTorch(Author) |
| DepthShrinker: A New Compression Paradigm Towards Boosting Real-Hardware Efficiency of Compact Neural Networks | ICML | Other | PyTorch(Author) |
| PAC-Net: A Model Pruning Approach to Inductive Transfer Learning | ICML | Other | - |
| Neural Network Pruning Denoises the Features and Makes Local Connectivity Emerge in Visual Tasks | ICML | Other | PyTorch(Author) |
| Interspace Pruning: Using Adaptive Filter Representations To Improve Training of Sparse CNNs | CVPR | W | - |
| Masking Adversarial Damage: Finding Adversarial Saliency for Robust and Sparse Network | CVPR | W | - |
| When To Prune? A Policy Towards Early Structural Pruning | CVPR | F | - |
| Fire Together Wire Together: A Dynamic Pruning Approach With Self-Supervised Mask PredictionFire Together Wire Together: A Dynamic Pruning Approach With Self-Supervised Mask Prediction | CVPR | F | - |
| Revisiting Random Channel Pruning for Neural Network Compression | CVPR | F | PyTorch(Author)(Releasing) |
| Learning Bayesian Sparse Networks With Full Experience Replay for Continual Learning | CVPR | F | - |
| DECORE: Deep Compression With Reinforcement Learning | CVPR | F | - |
| CHEX: CHannel EXploration for CNN Model Compression | CVPR | F | - |
| Compressing Models With Few Samples: Mimicking Then Replacing | CVPR | F | PyTorch(Author)(Releasing) |
| Contrastive Dual Gating: Learning Sparse Features With Contrastive Learning | CVPR | WF | - |
| DiSparse: Disentangled Sparsification for Multitask Model Compression | CVPR | Other | PyTorch(Author) |
| Learning Pruning-Friendly Networks via Frank-Wolfe: One-Shot, Any-Sparsity, And No Retraining | ICLR (Spotlight) | W | PyTorch(Author) |
| On Lottery Tickets and Minimal Task Representations in Deep Reinforcement Learning | ICLR (Spotlight) | W | - |
| An Operator Theoretic View On Pruning Deep Neural Networks | ICLR | W | PyTorch(Author) |
| Effective Model Sparsification by Scheduled Grow-and-Prune Methods | ICLR | W | PyTorch(Author) |
| Signing the Supermask: Keep, Hide, Invert | ICLR | W | - |
| How many degrees of freedom do we need to train deep networks: a loss landscape perspective | ICLR | W | PyTorch(Author) |
| Dual Lottery Ticket Hypothesis | ICLR | W | PyTorch(Author) |
| Peek-a-Boo: What (More) is Disguised in a Randomly Weighted Neural Network, and How to Find It Efficiently | ICLR | W | PyTorch(Author) |
| Sparsity Winning Twice: Better Robust Generalization from More Efficient Training | ICLR | W | PyTorch(Author) |
| SOSP: Efficiently Capturing Global Correlations by Second-Order Structured Pruning | ICLR (Spotlight) | F | PyTorch(Author)(Releasing) |
| Pixelated Butterfly: Simple and Efficient Sparse training for Neural Network Models | ICLR (Spotlight) | F | PyTorch(Author) |
| Revisit Kernel Pruning with Lottery Regulated Grouped Convolutions | ICLR | F | PyTorch(Author) |
| Plant 'n' Seek: Can You Find the Winning Ticket? | ICLR | F | PyTorch(Author) |
| Proving the Lottery Ticket Hypothesis for Convolutional Neural Networks | ICLR | F | PyTorch(Author) |
| On the Existence of Universal Lottery Tickets | ICLR | F | PyTorch(Author) |
| Training Structured Neural Networks Through Manifold Identification and Variance Reduction | ICLR | F | PyTorch(Author) |
| Learning Efficient Image Super-Resolution Networks via Structure-Regularized Pruning | ICLR | F | PyTorch(Author) |
| Prospect Pruning: Finding Trainable Weights at Initialization using Meta-Gradients | ICLR | WF | PyTorch(Author) |
| The Unreasonable Effectiveness of Random Pruning: Return of the Most Naive Baseline for Sparse Training | ICLR | Other | PyTorch(Author) |
| Prune and Tune Ensembles: Low-Cost Ensemble Learning with Sparse Independent Subnetworks | AAAI | W | - |
| Prior Gradient Mask Guided Pruning-Aware Fine-Tuning | AAAI | F | - |
| Convolutional Neural Network Compression through Generalized Kronecker Product Decomposition | AAAI | Other | - |