基于集成算法的脑电信号分类

Hoang-Thuy-Tien Vo, Thi-Nhu-Quynh Nguyen, Tuan Van Huynh
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引用次数: 0

摘要

本研究是生物信息学领域的研究。将想象的信号分类为支持向量机、k近邻和集成分类器。5通道设备记录数据,包括4个标签(向后思考、向前思考、向左思考、向右思考)。数据使用z-score和maxmin规范化技术进行优化,并与未规范化的数据进行比较。采用分层重复交叉验证法将训练数据和测试数据分割,取代了传统的数据分割技术。特征提取是决定分类器性能的一个关键因素。离散小波变换方法推荐的时频域特征有五个。研究了17个模型(支持向量机和k近邻分类器的6个子模型,5个集成分类器)。在提出的分层重复交叉验证子空间集成分类器中建立了一个模型,分类结果为89.25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification I-EEG Signals Using Ensemble Algorithms
The study was research in the bioinformatics field. The imagined signals are classified as the Support Vector Machine, K-Nearest Neighbor, and Ensemble Classifiers. A 5-channel device recorded the data, including four labels (thinking backward, thinking forward, thinking turn the left, and thinking turn the right). The data is optimized using z-score and maxmin normalization techniques and compared with data without normalization. The Stratified-Repeated cross-validation method was applied to split into training and testing data instead of the traditional data division technique. A key factor determining classifier performance is feature extraction. The time-frequency domain characteristics recommended by the Discrete Wavelet Transform method are five. The research examined 17 models (6 sub-model of Support Vector Machine and K-Nearest Neighbor classifiers, five Ensemble Classifiers). A model in the proposed Stratified-Repeated cross-validation Subspace Ensemble classifier with a classification result of 89.25%.
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