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Classification of hypnotisable groups based on normal EEG signals using the Recurrence Quantification Analysis and Support Vector Machine

机译:使用递归量化分析和支持向量机基于正常EEG信号对可催眠基团进行分类

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Hypnosis is an interesting brain state for researchers and can be used as hypnotherapy. The efficiency of hypnotherapy profoundly depends on the hypnotisability of subjects to reach depth of hypnosis. In this research, the normal EEG signals have been used in three mental tasks include: relax state with closed eyes (base line), mental multiplication and geometric figure rotation to evaluate groups with low, medium and high hypnotisability. Most previous researchers used hypnotic EEG signals whereas in our work the normal EEG signals have been used. Furthermore, features are extracted using RQA (Recurrence Quantification Analysis) method then best features were selected by Scaled Class Separability Selection algorithm and were applied to the SVM (Support Vector Machine) classifier. The performance of classifier is evaluated using leave-one-out cross-validation method. Groups are separated with 69.69% in the first mental task, 66.66% and 78.78% in second and third mental tasks respectively.
机译:催眠是研究人员感兴趣的一种大脑状态,可以用作催眠疗法。催眠疗法的效率在很大程度上取决于受试者达到催眠深度的催眠能力。在这项研究中,正常的脑电信号已用于以下三个心理任务中:闭眼放松状态(基线),心理乘法和几何图形旋转,以评估具有低,中和高催眠能力的人群。以前的大多数研究人员都使用催眠EEG信号,而在我们的工作中使用了正常EEG信号。此外,使用RQA(递归量化分析)方法提取特征,然后通过可缩放类可分离性选择算法选择最佳特征,并将其应用于SVM(支持向量机)分类器。分类器的性能使用留一法交叉验证方法进行评估。小组在第一项心理任务中的比例分别为69.69%,第二项和第三项心理任务的比例分别为66.66%和78.78%。

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