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Multi-Source Decentralized Transfer for Privacy-Preserving BCIs

Wen Zhang, Ziwei Wang, Dongrui Wu

2022IEEE Transactions on Neural Systems and Rehabilitation Engineering31 citationsDOIOpen Access PDF

Abstract

Transfer learning, which utilizes labeled source domains to facilitate the learning in a target model, is effective in alleviating high intra- and inter-subject variations in electroencephalogram (EEG) based brain-computer interfaces (BCIs). Existing transfer learning approaches usually use the source subjects' EEG data directly, leading to privacy concerns. This paper considers a decentralized privacy-preserving transfer learning scenario: there are multiple source subjects, whose data and computations are kept local, and only the parameters or predictions of their pre-trained models can be accessed for privacy-protection; then, how to perform effective cross-subject transfer for a new subject with unlabeled EEG trials? We propose an offline unsupervised multi-source decentralized transfer (MSDT) approach, which first generates a pre-trained model from each source subject, and then performs decentralized transfer using the source model parameters (in gray-box settings) or predictions (in black-box settings). Experiments on two datasets from two BCI paradigms, motor imagery and affective BCI, demonstrated that MSDT outperformed several existing approaches, which do not consider privacy-protection at all. In other words, MSDT achieved both high privacy-protection and better classification performance.

Topics & Concepts

Computer scienceTransfer (computing)Operating systemEEG and Brain-Computer InterfacesBlockchain Technology Applications and SecuritySecurity and Verification in Computing
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