CaMUL: Calibrated and Accurate Multi-view Time-Series Forecasting
February 7, 2022 ยท View on GitHub
Setup
We require you to have anaconda or miniconda installed. Run the script ./scripts/setup.sh to setup the virtual environment with all the required packages.
Data download and preprocessing
Twitter dataset
The probability distributions for each week over all states are available in ./data/tweet_dataset folder as npy files for each week and state.
Power dataset
Run the ./scripts/download_power.sh to download dataset.
Covid dataset
Covid dataset is available in ./data/covid_data folder. Run ./scripts/covid_preprocess.sh to preprocess the features of dataset.
Google Symptoms
Symptoms dataset is available in ./data/symptom_data. Run ./scripts/preprocess_symp.sh for preprocessing.
Experiments
We have ./train_tweets.py, ./train_covid.py, ./train_power.py, ./train_symp.py to run the model for each of the benchmarks. You may tune the arguments related week ahead, prediction week/season by passing the commandline arguments. Use the --help flag for a list of all arguments.
Acknowledgement
In case you use our code or datasets, please cite us as:
@article{kamarthi2021camul,
title={CAMul: Calibrated and Accurate Multi-view Time-Series Forecasting},
author={Kamarthi, Harshavardhan and Kong, Lingkai and Rodr{\'\i}guez, Alexander and Zhang, Chao and Prakash, B Aditya},
journal={Proceedings of the Web Conference 2022},
year={2022}
}