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A Hybrid Feature Pool-Based Emotional Stress State Detection Algorithm Using EEG Signals

机译:基于脑电信号的基于混合特征池的情绪压力状态检测算法

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摘要

Human stress analysis using electroencephalogram (EEG) signals requires a detailed and domain-specific information pool to develop an effective machine learning model. In this study, a multi-domain hybrid feature pool is designed to identify most of the important information from the signal. The hybrid feature pool contains features from two types of analysis: (a) statistical parametric analysis from the time domain, and (b) wavelet-based bandwidth specific feature analysis from the time-frequency domain. Then, a wrapper-based feature selector, Boruta, is applied for ranking all the relevant features from that feature pool instead of considering only the non-redundant features. Finally, the k-nearest neighbor (k-NN) algorithm is used for final classification. The proposed model yields an overall accuracy of 73.38% for the total considered dataset. To validate the performance of the proposed model and highlight the necessity of designing a hybrid feature pool, the model was compared to non-linear dimensionality reduction techniques, as well as those without feature ranking.
机译:使用脑电图(EEG)信号进行人体压力分析需要详细且特定领域的信息库,以开发有效的机器学习模型。在这项研究中,设计了一个多域混合特征库来识别信号中的大多数重要信息。混合特征池包含两种分析类型的特征:(a)时域的统计参数分析,以及(b)时频域的基于小波的带宽特定特征分析。然后,将基于包装的特征选择器Boruta应用于对该特征库中的所有相关特征进行排名,而不是仅考虑非冗余特征。最后,将k最近邻(k-NN)算法用于最终分类。对于所考虑的总数据集,所提出的模型的总体精度为73.38%。为了验证所提出模型的性能并强调设计混合特征池的必要性,将模型与非线性降维技术以及没有特征分级的技术进行了比较。

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