The PyTorch implementation of Paramixer from the paper Paramixer: Parameterizing Mixing Links in Sparse Factors Works Better than Dot-Product Self-Attention.
@inproceedings{9878955,
title = {Paramixer: Parameterizing Mixing Links in Sparse Factors Works Better than Dot-Product Self-Attention},
author = {Yu, Tong and Khalitov, Ruslan and Cheng, Lei and Yang, Zhirong},
booktitle = {2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
year = {2022},
pages = {681--690}
}
- Create a data folder:
mkdir data
- Download the dataset compressed archive
wget $URL
- Decompress the dataset compressed archive and put the contents into the data folder
unzip $dataset.zip
mv $datast ./data/$datast
- Run the main file
python $dataset_main.py --task="$task"
To install requirements:
pip3 install -r requirements.txt