PAT: Privacy-Preserving Adversarial Transfer for Accurate, Robust and Privacy-Preserving EEG Decoding
Xiaoqing Chen, Tianwang Jia, Yunlu Tu, Dongrui Wu

TL;DR
This paper introduces PAT, a unified framework that enhances EEG decoding accuracy, robustness, and privacy simultaneously, addressing key challenges in brain-computer interfaces with state-of-the-art results.
Contribution
The paper presents the first comprehensive approach combining data alignment, adversarial training, and privacy transfer for EEG decoding.
Findings
PAT outperforms over ten classic and state-of-the-art methods in accuracy and robustness.
PAT achieves a 9.76% improvement over privacy-unaware transfer learning methods.
Experiments on five public EEG datasets validate the effectiveness of PAT across three privacy scenarios.
Abstract
An electroencephalogram (EEG)-based brain-computer interface (BCI) enables direct communication between the brain and external devices. However, such systems face at least three major challenges in real-world applications: limited decoding accuracy, poor robustness, and privacy risks. Although prior studies have addressed one or two of these issues, methods that simultaneously improve accuracy, robustness, and privacy remain largely unexplored. In this paper, we propose Privacy-preserving Adversarial Transfer (PAT), a unified training framework that combines data alignment, adversarial training, and privacy-preserving transfer. PAT provides a single pipeline that can be instantiated under three privacy-preserving scenarios, i.e., centralized source-free transfer, federated source-free transfer, and transfer with privacy-preserved source data, while jointly improving accuracy and…
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