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Performance evaluation of five classification algorithms in low-dimensional feature vectors extracted from EEG signals

机译:从EEG信号提取的低维特征向量中的五个分类算法的性能评估

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摘要

There are lots of classification and feature extraction algorithms in the field of brain computer interface. It is significant to use optimal classification algorithm and fewer features to implement a fast and accurate brain computer interface system. In this paper, we evaluate the performances of five classical classifiers in different aspects including classification accuracy, sensitivity, specificity, Kappa and computational time in low-dimensional feature vectors extracted from EEG signals. The experiments show that naive Bayes is the most appropriate classifier for low dimensional feature vectors compared to k-nearest neighbor, support vector machine, linear discriminant analysis and decision tree classifiers.
机译:脑电脑界面领域有很多分类和特征提取算法。使用最佳分类算法和更少的功能来实现快速准确的脑电脑接口系统是很重要的。在本文中,我们在不同方面中评估五种古典分类器的性能,包括从EEG信号提取的低维特征向量中的分类精度,灵敏度,特异性,κ和计算时间。该实验表明,与K最近邻居,支持向量机,线性判别分析和决策树分类器相比,Naive Bayes是低维特征向量的最合适分类器。

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