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A Hybrid Approach to Feature Subset Selection for Brain-Computer Interface Design

机译:脑计算机接口设计的特征子集选择混合方法

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In brain-computer interface (BCI) development, temporal/spectral/ spatial/statistical features can be extracted from multiple electro-encephalography (EEG) signals and the number of features available could be up to thousands. Therefore, feature subset selection is an important and challenging problem in BCI design. Sequential forward floating search (SFFS) has been well recognized as one of the best feature selection methods. This paper proposes a filter-dominating hybrid SFFS method, aiming at high efficiency and insignificant accuracy sacrifice for high-dimensional feature subset selection. Experiments with this new hybrid approach have been conducted on BCI feature data, in which both linear and nonlinear classifiers as wrappers and Davies-Bouldin index and mutual information based index as filters are alternatively used to evaluate potential feature subsets. Experimental results have demonstrated the advantages and usefulness of the proposed method in high-dimensional feature subset selection for BCI design.
机译:在脑机接口(BCI)开发中,可以从多个脑电图(EEG)信号中提取时间/频谱/空间/统计特征,并且可用特征数可能多达数千个。因此,特征子集选择是BCI设计中一个重要且具有挑战性的问题。顺序向前浮动搜索(SFFS)已被公认为最佳的特征选择方法之一。针对高维特征子集选择的效率高和精度牺牲不高的问题,本文提出了一种以滤波器为主的混合SFFS方法。已经对BCI特征数据进行了这种新混合方法的实验,其中线性和非线性分类器作为包装器,Davies-Bouldin索引和基于互信息的索引作为过滤器可替代地用于评估潜在特征子集。实验结果证明了该方法在BCI设计的高维特征子集选择中的优势和实用性。

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