Federated deep transfer learning for EEG decoding using multiple BCI tasks
Xiaoxi Wei, A. Aldo Faisal

TL;DR
This paper introduces a federated deep transfer learning framework for EEG decoding that preserves privacy and effectively utilizes diverse datasets from multiple BCI tasks, improving decoding performance.
Contribution
The authors propose the MF-SCSN framework, enabling privacy-preserving transfer learning across different BCI tasks and data sources, enhancing data reusability and scalability.
Findings
Outperformed baseline decoder by 3% on BEETL competition data
Protected privacy of brain data across data centers
Enabled transfer learning across different BCI tasks
Abstract
Deep learning has been successful in BCI decoding. However, it is very data-hungry and requires pooling data from multiple sources. EEG data from various sources decrease the decoding performance due to negative transfer. Recently, transfer learning for EEG decoding has been suggested as a remedy and become subject to recent BCI competitions (e.g. BEETL), but there are two complications in combining data from many subjects. First, privacy is not protected as highly personal brain data needs to be shared (and copied across increasingly tight information governance boundaries). Moreover, BCI data are collected from different sources and are often based on different BCI tasks, which has been thought to limit their reusability. Here, we demonstrate a federated deep transfer learning technique, the Multi-dataset Federated Separate-Common-Separate Network (MF-SCSN) based on our previous work…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Advanced Memory and Neural Computing · Functional Brain Connectivity Studies
