Online Optimization of Stimulation Speed in an Auditory Brain-Computer Interface under Time Constraints
Jan Sosulski, David H\"ubner, Aaron Klein, Michael Tangermann

TL;DR
This paper presents an online Bayesian optimization method to automatically select optimal stimulation speed in an auditory BCI, improving individual performance under time constraints.
Contribution
It introduces a combined Bayesian and random search approach for real-time parameter optimization in BCIs, tailored to individual differences.
Findings
Bayesian optimization successfully identified optimal stimulation speed for most subjects.
Subjects showed varied sensitivity to stimulation speed, affecting optimization success.
The method enhances BCI usability by personalizing experimental parameters.
Abstract
The decoding of brain signals recorded via, e.g., an electroencephalogram, using machine learning is key to brain-computer interfaces (BCIs). Stimulation parameters or other experimental settings of the BCI protocol typically are chosen according to the literature. The decoding performance directly depends on the choice of parameters, as they influence the elicited brain signals and optimal parameters are subject-dependent. Thus a fast and automated selection procedure for experimental parameters could greatly improve the usability of BCIs. We evaluate a standalone random search and a combined Bayesian optimization with random search in a closed-loop auditory event-related potential protocol. We aimed at finding the individually best stimulation speed -- also known as stimulus onset asynchrony (SOA) -- that maximizes the classification performance of a regularized linear discriminant…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Blind Source Separation Techniques
MethodsRandom Search
