CWEFS: Brain volume conduction effects inspired channel-wise EEG feature selection for multi-dimensional emotion recognition
Xueyuan Xu, Wenjia Dong, Fulin Wei, Li Zhuo

TL;DR
This paper introduces CWEFS, a novel EEG feature selection method inspired by brain volume conduction effects, which enhances multi-dimensional emotion recognition by integrating latent structure modeling and adaptive channel importance.
Contribution
CWEFS uniquely incorporates brain volume conduction effects and latent structure modeling into EEG feature selection for improved emotion recognition accuracy.
Findings
CWEFS outperforms nineteen existing feature selection methods.
Achieves optimal emotion recognition across six evaluation metrics.
Validated on three EEG datasets with multi-dimensional emotional labels.
Abstract
Due to the intracranial volume conduction effects, high-dimensional multi-channel electroencephalography (EEG) features often contain substantial redundant and irrelevant information. This issue not only hinders the extraction of discriminative emotional representations but also compromises the real-time performance. Feature selection has been established as an effective approach to address the challenges while enhancing the transparency and interpretability of emotion recognition models. However, existing EEG feature selection research overlooks the influence of latent EEG feature structures on emotional label correlations and assumes uniform importance across various channels, directly limiting the precise construction of EEG feature selection models for multi-dimensional affective computing. To address these limitations, a novel channel-wise EEG feature selection (CWEFS) method is…
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