Systems that can automatically analyze EEG signals can aid neurologists by reducing heavy workload and delays. However, such systems need to be first trained using a labeled dataset. While large corpuses of EEG data exist, a fraction of them are labeled. Hand-labeling data increases workload for the very neurologists we try to aid. This paper proposes a semi-supervised learning workflow that can not only extract meaningful information from large unlabeled EEG datasets but also make predictions with minimal supervision, using labeled datasets as small as 5 examples.
@article{arxiv.1903.07822,
title = {A semi-supervised deep learning algorithm for abnormal EEG identification},
author = {Subhrajit Roy and Kiran Kate and Martin Hirzel},
journal= {arXiv preprint arXiv:1903.07822},
year = {2019}
}
Comments
Machine Learning for Health (ML4H) at NeurIPS 2019 - Extended Abstract