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Normalized mutual information feature selection for electroencephalogram data based on grassberger entropy estimator

机译:基于Grassberger熵估计器的脑电图数据归一化互信息特征选择

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Recently, Electroencephalogram (EEG) has become increasingly important in the role of psychiatric diagnosis and emotion recognition. However, many irrelevant features make it difficult to identify patterns accurately. Obtaining valid features from electroencephalogram can improve the classification and generalization performance. In this paper, an improved normalized mutual information feature selection algorithm which is based on Grassberger entropy estimator (G-NMIFS) is proposed for EEG data. We employ the k-Nearest Neighbor (kNN), Support Vector Machine (SVM), and Naïve Bayes methods to compare the proposed approach with normalized mutual information feature selection using Naïve estimator and Miller-adjust method. Experimental results on two EEG data sets show that the proposed method can select relevant subsets and improve classification performance effectively.
机译:最近,脑电图(EEG)在精神病学诊断和情感识别中的作用越来越重要。但是,许多不相关的功能使准确识别模式变得困难。从脑电图获取有效特征可以改善分类和泛化性能。本文针对脑电数据,提出了一种基于格拉斯伯格熵估计器(G-NMIFS)的改进归一化互信息特征选择算法。我们采用k最近邻(kNN),支持向量机(SVM)和朴素贝叶斯方法,将所提出的方法与使用朴素估计器和Miller调整法的归一化互信息特征选择进行比较。在两个脑电数据集上的实验结果表明,该方法可以选择相关的子集并有效地提高分类性能。

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