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Fast feature selection algorithm of EEG data based on GPU technology

机译:基于GPU技术的脑电数据快速特征选择算法

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摘要

With the rapid development of EEG technology, the rapid selection of EEG data features makes it possible for subsequent applications. To improve the relevance of EEG data, this paper proposes a feature selection algorithm of EEG data based on GPU technology. This method takes the whole gene pathway as a whole, takes its EEG data path as a specific variable, and quantifies each path by distance measurement; secondly, it uses regularisation dimension reduction technology to brush out the essential features of EEG data and makes use of this method to select the essential features of EEG data. Finally, principal component analysis (PCA) is used to evaluate the path model quickly and accurately. The experimental analysis shows that the method solves the problems of high requirement of EEG data sample distribution and slow evaluation speed. Moreover, the method proposed in this paper shows the great ability of real-time performance.
机译:随着脑电技术的飞速发展,脑电数据特征的快速选择使后续应用成为可能。为了提高脑电数据的相关性,该文提出一种基于GPU技术的脑电数据特征选择算法。该方法将整个基因通路作为一个整体,将其脑电数据通路作为特定变量,通过距离测量对每条通路进行量化;其次,利用正则化降维技术梳理出脑电数据的本质特征,并利用该方法选择脑电数据的本质特征;最后,利用主成分分析(PCA)对路径模型进行快速、准确的评估。实验分析表明,该方法解决了脑电数据样本分布要求高、评价速度慢等问题。此外,本文提出的方法显示出强大的实时性能能力。

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