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Tackling EEG signal classification with least squares support vector machines: a sensitivity analysis study.

机译:用最小二乘支持向量机处理脑电信号分类:敏感性分析研究。

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摘要

The electroencephalogram (EEG) signal captures the electrical activity of the brain and is an important source of information for studying neurological disorders. The proper analysis of this biological signal plays an important role in the domain of brain-computer interface, which aims at the construction of communication channels between human brain and computers. In this paper, we investigate the application of least squares support vector machines (LS-SVM) to the task of epilepsy diagnosis through automatic EEG signal classification. More specifically, we present a sensitivity analysis study by means of which the performance levels exhibited by standard and least squares SVM classifiers are contrasted, taking into account the setting of the kernel function and of its parameter value. Results of experiments conducted over different types of features extracted from a benchmark EEG signal dataset evidence that the sensitivity profiles of the kernel machines are qualitatively similar, both showing notable performance in terms of accuracy and generalization. In addition, the performance accomplished by optimally configured LS-SVM models is also quantitatively contrasted with that obtained by related approaches for the same dataset.
机译:脑电图(EEG)信号捕获大脑的电活动,是研究神经系统疾病的重要信息来源。对这种生物信号的正确分析在脑机接口领域起着重要作用,该接口旨在构建人脑与计算机之间的通信通道。在本文中,我们研究了最小二乘支持向量机(LS-SVM)在通过自动EEG信号分类进行癫痫诊断任务中的应用。更具体地说,我们提出了一项敏感性分析研究,通过该研究比较了标准和最小二乘SVM分类器表现出的性能水平,同时考虑了内核函数及其参数值的设置。对从基准EEG信号数据集中提取的不同类型特征进行实验的结果表明,内核机器的灵敏度曲线在质量上相似,在准确性和泛化方面均显示出显着的性能。此外,通过最佳配置的LS-SVM模型实现的性能也与针对同一数据集的相关方法所获得的性能进行了定量对比。

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