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EEG Signals Classification Based on Wavelet Packet and Ensemble Extreme Learning Machine

机译:基于小波包和集合极限学习机的EEG信号分类

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To solve the problem of unstable predicted results and poor generalization ability when a single extreme learning machine is treated as a classifier, this paper puts forward a classification algorithm using ensemble Extreme Learning Machine based on linear discriminant analysis. The main idea is applying linear discriminant analysis on each subset of the training samples generated by bootstrapping. By this way, a subset of the larger diversities can be got, which increases the diversity between each machine and reduces the ensemble generalization error and redundant data. Wavelet packet is used to extract features, and the proposed algorithm is used for EEG signal classification. The experiments results with the UCI datasets and another publicly available datasets show that compared with traditional methods and others, the proposed method can significantly improve the classification accuracy and stability, and produce better generalization performance.
机译:为了解决不稳定的预测结果问题,概括能力差,当一个极端学习机被视为分类器时,基于线性判别分析,使用集合极限学习机进行了分类算法。主要思想是对通过自举生成的训练样本的每个子集应用线性判别分析。通过这种方式,可以获得较大多样性的子集,这可以增加每个机器之间的分集,并减少集合泛化误差和冗余数据。小波分组用于提取特征,并且所提出的算法用于EEG信号分类。实验结果与UCI数据集和另一个公开的数据集显示,与传统方法等相比,所提出的方法可以显着提高分类准确性和稳定性,并产生更好的泛化性能。

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