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AutoTransfer: Subject Transfer Learning with Censored Representations on Biosignals Data

Authors :
Smedemark-Margulies, Niklas
Wang, Ye
Koike-Akino, Toshiaki
Erdogmus, Deniz
Publication Year :
2021

Abstract

We provide a regularization framework for subject transfer learning in which we seek to train an encoder and classifier to minimize classification loss, subject to a penalty measuring independence between the latent representation and the subject label. We introduce three notions of independence and corresponding penalty terms using mutual information or divergence as a proxy for independence. For each penalty term, we provide several concrete estimation algorithms, using analytic methods as well as neural critic functions. We provide a hands-off strategy for applying this diverse family of regularization algorithms to a new dataset, which we call "AutoTransfer". We evaluate the performance of these individual regularization strategies and our AutoTransfer method on EEG, EMG, and ECoG datasets, showing that these approaches can improve subject transfer learning for challenging real-world datasets.<br />Comment: 17 page extended version of International Engineering in Medicine and Biology Conference 2022 paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.09796
Document Type :
Working Paper