首页> 外文会议>International Conference on Bioinformatics and Biomedical Engineering >F. Ortu?o and I. Rojas (Eds.): IWBBIO 2015, Part I, LNCS 9043, pp. 347-359, 2015. ? Springer International Publishing Switzerland 2015 Evolutionary Multiobjective Feature Selection in Multiresolution Analysis for BCI
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F. Ortu?o and I. Rojas (Eds.): IWBBIO 2015, Part I, LNCS 9043, pp. 347-359, 2015. ? Springer International Publishing Switzerland 2015 Evolutionary Multiobjective Feature Selection in Multiresolution Analysis for BCI

机译:F. Ortu?O和I. Rojas(EDS):IWBBIO 2015,I,第IM,LNCS 9043,PP。347-359,2015。? Springer International Publishing Switzerland 2015年BCI多分辨率分析中的进化多目标功能选择

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Although multiresolution analysis (MRA) may not be considered as the best approach for brain-computer interface (BCI) applications despite its useful properties for signal analysis in the temporal and spectral domains, some previous studies have shown that MRA based frameworks for BCI can provide very good performance. Moreover, there is much room for improving the performance of the MRA based BCI by feature selection or feature dimensionality reduction. This paper investigates feature selection in the MRAbased frameworks for BCI, proposes and evaluates several wrapper approaches to evolutionary multiobjective feature selection. In comparison with the baseline MRA approach used in previous studies, the proposed evolutionary multiobjective feature selection procedures provide similar or better classification performance, with significant reduction in the number of features that need to be computed.
机译:尽管多分辨率分析(MRA)可能不被视为脑接口(BCI)应用的最佳方法,尽管存在时间和光谱域中的信号分析,但之前的一些研究表明,基于MRA的BCI框架可以提供表现非常好。此外,通过特征选择或特征维数减少,有很多用于改善基于BCI的性能的空间。本文调查了BCI的MRABASED框架中的功能选择,提出并评估了几种包装方法来进化多目标特征选择。与先前研究中使用的基线MRA方法相比,所提出的进化多目标选择程序提供了类似或更好的分类性能,其具有需要计算的特征数量的显着降低。

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