基于EEGNet的脑电信号人格特征分类

Veronika Guleva, A. Calcagno, Pierluigi Reali, A. Bianchi
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引用次数: 0

摘要

人格代表着个体在认知和行为上的差异。大五人格系统所确定的五种人格特征,传统上是通过使用自我报告问卷来评估的,这种问卷容易存在偏见问题。因此,出现了对自动人格评估方法的需求。根据脑电图信号对特定刺激的反应来评估人格已经显示出令人鼓舞的结果。在这项工作中,我们采用了EEGNet,一种用于脑电图解码的紧凑CNN模型,来实现自动人格特征二值分类器。为此,我们使用了AMIGOS数据集的EEG痕迹,这些数据是在情绪视频可视化过程中获得的。测试了不同的数据预处理方式和不同的模型超参数。表现最好的模型在亲和性、外向性、责任心、情绪稳定性和开放性方面的分类准确率分别为0.93、0.92、0.90和0.89。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personality traits classification from EEG signals using EEGNet
Personality represents the individual differences in cognition and behavior. The five personality traits, as identified by the Big Five system, are traditionally assessed by using self-report questionnaires that are subject to bias problems. For this reason, the need for an automatic personality assessment method has emerged. Assessing personality from EEG signals recorded as a response to specific stimuli has shown promising results. In this work, we adopted the EEGNet, a compact CNN model developed for EEG decoding, to implement an automatic personality trait binary classifier. For this purpose, we used the EEG traces of the AMIGOS dataset, which were acquired on 38 subjects during the visualization of emotional videos. Different types of data preprocessing and different model hyperparameters were tested. The best performing model achieves classification accuracy of 0.93 for Agreeableness, 0.92 for Extroversion, 0.90 for Conscientiousness, 0.89 for Emotional Stability and 0.89 for Openness.
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