Characterizing social and cognitive EEG-ERP through multiple kernel learning

Heliyon. 2023 Jun 7;9(6):e16927. doi: 10.1016/j.heliyon.2023.e16927. eCollection 2023 Jun.

Abstract

EEG-ERP social-cognitive studies with healthy populations commonly fail to provide significant evidence due to low-quality data and the inherent similarity between groups. We propose a multiple kernel learning-based approach to enhance classification accuracy while keeping the traceability of the features (frequency bands or regions of interest) as a linear combination of kernels. These weights determine the relevance of each source of information, which is crucial for specialists. As a case study, we classify healthy ex-combatants of the Colombian armed conflict and civilians through a cognitive valence recognition task. Although previous works have shown accuracies below 80% with these groups, our proposal achieved an F1 score of 98%, revealing the most relevant bands and brain regions, which are the base for socio-cognitive trainings. With this methodology, we aim to contribute to standardizing EEG analyses and enhancing their statistics.

Keywords: Cognitive neuroscience; EEG-ERP; Multiple kernel learning; Social neuroscience.