Cross-subject EEG-based emotion recognition through dynamic optimization of random forest with sparrow search algorithm

被引:1
作者
Zhang X. [1 ]
Wang S. [1 ]
Xu K. [1 ]
Zhao R. [1 ]
She Y. [2 ]
机构
[1] School of Electronics and Information, Xi'an Polytechnic University, Shaanxi, Xi'an
[2] School of Life Sciences, Xi Dian University, Shaanxi, Xi'an
关键词
cross-subject; DTN; emotion recognition; LMN; SSA-RF;
D O I
10.3934/mbe.2024210
中图分类号
学科分类号
摘要
The objective of EEG-based emotion recognition is to classify emotions by decoding signals, with potential applications in the fields of artificial intelligence and bioinformatics. Cross-subject emotion recognition is more difficult than intra-subject emotion recognition. The poor adaptability of classification model parameters is a significant factor of low accuracy in cross-subject emotion recognition. We propose a model of a dynamically optimized Random Forest based on the Sparrow Search Algorithm (SSA-RF). The decision trees number (DTN) and the leave minimum number (LMN) of the RF are dynamically optimized by the SSA. 12 features are used to construct feature combinations for selecting the optimal feature combination. DEAP and SEED datasets are employed for testing the performance of SSA-RF. The experimental results show that the accuracy of binary classification is 76.81% on DEAP, and the accuracy of triple classification is 75.96% on SEED based on SSA-RF, which are both higher than that of traditional RF. This study provides new insights for the development of cross-subject emotion recognition, and has significant theoretical value. © 2024 the Author(s).
引用
收藏
页码:4779 / 4800
页数:21
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