基于支持向量机的EEG人格维度分类

Fadhilah Qalbi Annisa, E. Supriyanto, Sahar Taheri
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引用次数: 4

摘要

个性是在某种情况下形成每个个体的行为倾向的基本要素。一个常用的描述人格的模型是大五人格,它将人格特征分为五个维度:神经质、外向性、开放性、宜人性和尽责性。通过生理信号进行人格评估,由于考生在考试过程中的作用最小,因此测试结果客观可靠。一种被广泛推荐的方法是基于信号的脑电图分析(EEG)。利用离散小波变换(DWT)提取公共数据库的脑电信号特征,并利用支持向量机(SVM)进行分类,确定人格维度。结果表明,与其他技术在相同数据集上的应用相比,该技术在确定外向性和神经质水平方面的准确率分别为69%和75.9%。然而,为了生成可靠的模型,这种精度仍然需要提高。增加的数据可变性对于理解每个人的大脑动态活动是有用的。
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Personality Dimensions Classification with EEG Analysis using Support Vector Machine
Personality is the fundamental thing that forms the behavioral tendencies of each individuality in a situation. A common model used to describe personality is the big five personality that divides personality traits into five dimensions of neuroticism, extraversion, openness, agreeableness, and conscientiousness. Personality assessment through physiological signals offers objectivity and reliability of the test results due to the minimal role of test takers in the examination process. One widely recommended approach is signal-based analysis of electroencephalography (EEG). The EEG signal feature of the ASCERTAIN public database was extracted using discrete wavelet transform (DWT) and was classified using support vector machine (SVM) to determine personality dimensions. The results showed better performance compared to the application of other techniques on the same dataset with 69% and 75.9% accuracy to determine extraversion and neuroticism level, respectively. However, this accuracy still needs to be improved to generate reliable model. Increased data variability can be useful for understanding brain dynamic activity per individual.
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