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Unsupervised Classification of Epileptic EEG Signals with Multi Scale K-Means Algorithm

机译:具有多尺度K均值算法的癫痫eEG信号的无监督分类

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Most epileptic EEG classification algorithms are supervised and require large training data sets, which hinders its use in real time applications. This paper proposes an unsupervised multi-scale K-means (MSK-means) algorithm to distinguish epileptic EEG signals from normal EEGs. The random initialization of the K-means algorithm can lead to wrong clusters. Based on the characteristics of EEGs, the MSK-means algorithm initializes the coarse-scale centroid of a cluster with a suitable scale factor. In this paper, the MSK-means algorithm is proved theoretically being superior to the K-means algorithm on efficiency. In addition, three classifiers: the K-means, MSK-means and support vector machine (SVM), are used to discriminate epileptic EEGs from normal EEGs using six features extracted by the sample entropy technique. The experimental results demonstrate that the MSK-means algorithm achieves 7% higher accuracy with 88% less execution time than that of K-means, and 6% higher accuracy with 97% less execution time than that of the SVM.
机译:大多数癫痫性EEG分类算法受到监督,需要大型培训数据集,其在实时应用中阻碍了其使用。本文提出了一种无监督的多尺度K型(MSK-MEACE)算法,以区分来自正常脑电图的癫痫脑电图信号。 K-means算法的随机初始化可能导致错误的群集。基于EEG的特征,MSK-均值算法初始化集群的粗级质心,具有合适的比例因子。在本文中,从理论上证明了MSK-均值算法优于K-Means算法的效率。另外,三个分类器:K-means,msk-means和支持向量机(SVM)用于使用由样本熵技术提取的六个特征来从正常EEG中区分癫痫脑电图。实验结果表明,MSK-均值算法的准确度高出7%,执行时间比K-ins的88%,高精度高出6%,执行时间比SVM的执行时间更低。

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