The original code has an unintential bug in evaluation that causes an inaccurate assessment of the model’s true capability. We thank Yiqian Yang and Hyejeong Jo, et al for spotting and investigating the problem! Please read https://arxiv.org/pdf/2405.06459 for more details.
Please refer to https://github.com/NeuSpeech/EEG-To-Text for the corrected code and detailed experiments. To avoid further confusion, we archived this repo.
Please read https://arxiv.org/pdf/2405.06459 before proceeding!
run conda env create -f environment.yml
to create the conda environment (named "EEGToText") used in our experiments.
- Download ZuCo v1.0 'Matlab files' for 'task1-SR','task2-NR','task3-TSR' from https://osf.io/q3zws/files/ under 'OSF Storage' root,
unzip and move all.mat
files to~/datasets/ZuCo/task1-SR/Matlab_files
,~/datasets/ZuCo/task2-NR/Matlab_files
,~/datasets/ZuCo/task3-TSR/Matlab_files
respectively. - Download ZuCo v2.0 'Matlab files' for 'task1-NR' from https://osf.io/2urht/files/ under 'OSF Storage' root, unzip and move all
.mat
files to~/datasets/ZuCo/task2-NR-2.0/Matlab_files
.
run bash ./scripts/prepare_dataset.sh
to preprocess .mat
files and prepare sentiment labels.
For each task, all .mat
files will be converted into one .pickle
file stored in ~/datasets/ZuCo/<task_name>/<task_name>-dataset.pickle
.
Sentiment dataset for ZuCo (sentiment_labels.json
) will be stored in ~/datasets/ZuCo/task1-SR/sentiment_labels/sentiment_labels.json
.
Sentiment dataset for filtered Stanford Sentiment Treebank will be stored in ~/datasets/stanfordsentiment/ternary_dataset.json
To train an EEG-To-Text decoding model, run bash ./scripts/train_decoding.sh
.
To evaluate the trained EEG-To-Text decoding model from above, run bash ./scripts/eval_decoding.sh
.
For detailed configuration of the available arguments, please refer to function get_config(case = 'train_decoding')
in /config.py
We first train the decoder and the classifier individually, and then we evaluate the pipeline on ZuCo task1-SR data.
To run the whole training and evaluation process, run bash ./scripts/train_eval_zeroshot_pipeline.sh
.
For detailed configuration of the available arguments, please refer to function get_config(case = 'eval_sentiment')
in /config.py
@inproceedings{wang2022open,
title={Open vocabulary electroencephalography-to-text decoding and zero-shot sentiment classification},
author={Wang, Zhenhailong and Ji, Heng},
booktitle={Proceedings of the AAAI Conference on Artificial Intelligence},
volume={36},
number={5},
pages={5350--5358},
year={2022}
}