Multi-Output Regression for Integrated Prediction of Valence and Arousal in EEG-Based Emotion Recognition

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초록

Previous research in electroencephalogram (EEG)based emotion recognition has assumed valence and arousal as independent dimensions and derived results using separate classification models for each. Our study aims to introduce multi-output regression to continuously predict the correlated valence and arousal. We compared the prediction performance of a total of three models: Single-output Regression, Multi-output Regression, and Multi-output Regression with a Chain structure. The analysis yielded the following results: 1) The performance of multi-output and single-output was similar, but the multi-output method is more useful as it can produce multiple outputs at once. 2) Predictions and actuals for valence and arousal were similar. Furthermore, considering that human emotions are not constant during certain intervals, it can provide insights close to the ground truth for understanding changes in emotional states.

키워드

Multi-output RegressionEmotion RecognitionEEGValenceArousal
제목
Multi-Output Regression for Integrated Prediction of Valence and Arousal in EEG-Based Emotion Recognition
저자
Choi, HyoSeonWoo, ChaeEunKong, JiYunKim, Byung Hyung
DOI
10.1109/BCI60775.2024.10480527
발행일
2024
유형
Proceedings Paper
저널명
International Winter Conference on Brain-Computer Interface, BCI