Classification of Products Preference from EEG Signals using SVM Classifier

Nasim Alnuman, Samira Al-Nasser, Omar Yasin
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引用次数: 1

Abstract

The investigation of the brain activities during the visualization of different commercial images can help better understand the brain activities and its application in neuromarketing. This work presents an evaluation of different EEG time and frequency domain features within different brain regions of interest under the support vector machine (SVM) classifier with the research’s goal to determine the best features and brain regions corresponding to the customer feelings. An online available dataset of 25 users’, using a 14 channel EEG system, responses to 42 products is used. The outputs included two classes: like and dislike. The data is preprocessed by filtration, independent component analysis (ICA), principle component analysis (PCA) and normalization. Sixteen features/feature groups are derived from the preprocessed data using a window size of one-second and a total of four seconds of EEG signal. The features are then studied in an SVM classifier. The accuracy of the classification varied between the different features ranging between 60.71% for the Alpha power and 66.25% for the signal’s slope sign change (SSC) feature using all channels. Further, the frontal lobe of the brain gave higher accuracy in comparison with the other regions, and the left frontal lobe was more dominant than the right frontal lobe in relation to the product preference decision. The results suggest an improvement in the classification accuracy when applying ICA and PCA. The left frontal lobe has the potential to classify user decisions for future simplified systems.
基于SVM分类器的脑电信号产品偏好分类
研究不同商业形象可视化过程中的大脑活动,有助于更好地理解大脑活动及其在神经营销中的应用。本研究在支持向量机(SVM)分类器下对不同感兴趣的脑区域内的不同EEG时间和频域特征进行了评估,目的是确定与客户感受相对应的最佳特征和脑区域。一个在线可用的25个用户的数据集,使用14通道脑电图系统,对42种产品的反应被使用。输出包括两类:喜欢和不喜欢。通过过滤、独立成分分析(ICA)、主成分分析(PCA)和归一化对数据进行预处理。利用窗口大小为1秒、共4秒的脑电信号,从预处理数据中得到16个特征/特征组。然后在支持向量机分类器中研究这些特征。在所有通道中,Alpha功率的分类准确率为60.71%,而信号斜率变化(SSC)特征的分类准确率为66.25%。此外,与其他区域相比,大脑额叶给出了更高的准确性,并且在产品偏好决策方面,左额叶比右额叶更具优势。结果表明,应用ICA和PCA可以提高分类精度。左额叶有可能对未来简化系统的用户决策进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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