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Toward the enhancement of affective brain–computer interfaces using dependence within EEG series

Yu Pei, Shaokai Zhao, Liang Xie, Bowen Ji, Zhiguo Luo, Chuang Ma, Kun Gao, Xiaomin Wang, Tingyu Sheng, Ye Yan, Erwei Yin

2025Journal of Neural Engineering33 citationsDOI

Abstract

Abstract In recent years, electroencephalogram (EEG)-based affective brain–computer interfaces (aBCI) has made remarkable advances. Objective . However, a subtle but crucial problem caused by the sliding window method has long been overlooked, which is the serious quantity mismatch between stimuli and short-term EEG frames. This may be an important factor limiting the performance of aBCIs. Approach . We refer to this mismatch as the quantity-independence imbalance (Q/I imbalance) and we propose the weak independence hypothesis to explain the mismatch. To validate this hypothesis and explore the effects of the Q/I imbalance on short-term EEG frames, we design four experiments from four perspectives, which are visualization, cross-validation, randomness test, and redundancy test. Main results . Inspired by validation experiments, we propose an inference correction (IC) method to enhancing the emotional predictions by leveraging the majority of the classifier’s outputs. The proposed IC method is evaluated on two datasets involving 60 subjects using both intra-subject and inter-subject validation protocols. Our IC achieves a significant improvement of 14.97% in classification accuracy. Significance . This study promotes the understanding of the time-dependent nature of EEG signals in aBCI.

Topics & Concepts

ElectroencephalographyComputer scienceRandomnessArtificial intelligencePattern recognition (psychology)Redundancy (engineering)InferenceClassifier (UML)Speech recognitionBrain–computer interfaceMachine learningPsychologyMathematicsStatisticsNeuroscienceOperating systemEEG and Brain-Computer InterfacesECG Monitoring and AnalysisNeural dynamics and brain function
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