Distributionally Robust Cross Subject EEG Decoding
Tiehang Duan, Zhenyi Wang, Gianfranco Doretto, Fang Li, Cui Tao,, Donald Adjeroh

TL;DR
This paper introduces a distributionally robust optimization framework using Wasserstein gradient flow to enhance EEG decoding robustness against data corruption, outperforming existing methods.
Contribution
It proposes a novel data evolution approach based on distributionally robust optimization, improving EEG decoding robustness and complementing existing augmentation techniques.
Findings
Significant performance improvement on corrupted EEG signals
Framework effectively learns more robust and diverse features
Compatible with other data augmentation methods
Abstract
Recently, deep learning has shown to be effective for Electroencephalography (EEG) decoding tasks. Yet, its performance can be negatively influenced by two key factors: 1) the high variance and different types of corruption that are inherent in the signal, 2) the EEG datasets are usually relatively small given the acquisition cost, annotation cost and amount of effort needed. Data augmentation approaches for alleviation of this problem have been empirically studied, with augmentation operations on spatial domain, time domain or frequency domain handcrafted based on expertise of domain knowledge. In this work, we propose a principled approach to perform dynamic evolution on the data for improvement of decoding robustness. The approach is based on distributionally robust optimization and achieves robustness by optimizing on a family of evolved data distributions instead of the single…
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Taxonomy
TopicsBlind Source Separation Techniques · EEG and Brain-Computer Interfaces · Speech and Audio Processing
