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Feature Selection and Analysis EEG Signals with Sequential Forward Selection Algorithm and Different Classifiers

机译:具有顺序前进选择算法和不同分类器的特征选择和分析EEG信号

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In this study, we investigated the features that could best represent EEG signals for brain computer interface systems and classifier accuracy was compared using different classification methods. EEG signals data set were taken from “BCI II Competition”. In this study, inadequate features that reduce classification accuracy were determined by using sequential forward selection algorithms and were extracted from real-dimensional feature matrix. The remaining active feature matrix and real-dimensional feature matrix were classified using k-nearest neighbor, subspace K-nearest neighbor, support vector machines, subspace discriminant and random forest decision tree algorithms. As a result of this study, the highest classification accuracy of real-dimensional feature matrix was obtained as 83.8% by random forest decision tree algorithm. In the other, the highest classification accuracy of dimention reductioned feature matrix with sequential forward selection algorthm was obtained as 96.4% by random forest decision tree algorithm.
机译:在本研究中,我们调查了最佳代表脑电器接口系统的EEG信号的功能,使用不同的分类方法进行比较脑电器界面系统和分类器精度。 EEG信号数据集是从“BCI II竞争”中的。在本研究中,通过使用顺序前进选择算法确定降低分类精度的不足功能,并从实际特征矩阵中提取。使用k-collect邻居,子空间k最近邻居,支持向量机,子空间判别和随机林决策树算法分类剩余的活动特征矩阵和实际特征矩阵。由于本研究,通过随机林决策树算法获得了实际特征矩阵的最高分类准确度为83.8%。另一方面,随机林决策树算法获得了具有顺序前进选择Alcorthm的尺寸还原特征矩阵的最高分类精度。

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