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Competition: Competition Track Day 4: Overviews + Breakout Sessions

The NeurIPS 2021 BEETL Competition: Benchmarks for EEG Transfer Learning + Q&A

Xiaoxi Wei · Vinay Jayaram · Sylvain Chevallier · Giulia Luise · Camille Jeunet · Moritz Grosse-Wentrup · Alexandre Gramfort · Aldo A Faisal


Abstract:

The Benchmarks for EEG Transfer Learning (BEETL) is a competition that aims to stimulate the development of transfer and meta-learning algorithms applied to a prime example of what makes the use of biosignal data hard, EEG data. BEETL acts as a much-needed benchmark for domain adaptation algorithms in EEG decoding and provides a real-world stimulus goal for transfer learning and meta-learning developments for both academia and industry. Given the multitude of different EEG-based algorithms that exist, we offer two specific challenges: Task 1 is a cross-subject sleep stage decoding challenge reflecting the need for transfer learning in clinical diagnostics, and Task 2 is a cross-dataset motor imagery decoding challenge reflecting the need for transfer learning in human interfacing.