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首页> 外文期刊>Computers and Electrical Engineering >Electrocardiogram beat classification using empirical mode decomposition and multiclass directed acyclic graph support vector machine
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Electrocardiogram beat classification using empirical mode decomposition and multiclass directed acyclic graph support vector machine

机译:基于经验模式分解和多类有向无环图支持向量机的心电图搏动分类

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摘要

In this paper, a classifier motivated from statistical learning theory, i.e., support vector machine, with a new approach based on multiclass directed acyclic graph has been proposed for classification of four types of electrocardiogram signals. The motivation for selecting Directed Acyclic Graph Support Vector Machine (DAGSVM) is to have more accurate classifier with less computational cost. Empirical mode decomposition and subsequently singular value decomposition have been used for computing the feature vector matrix. Further, fivefold cross-validation and particle swarm optimization have been used for optimal selection of SVM model parameters to improve the performance of DAGSVM. A comparison has been made between proposed algorithm and other two classifiers, i.e., K-Nearest Neighbor (KNN) and Artificial Neural Network (ANN). The DAGSVM has yielded an average accuracy of 98.96% against 95.83% and 96.66% for the KNN and the ANN, respectively. The results obtained clearly confirm the superiority of the DAGSVM approach over other classifiers.
机译:在本文中,提出了一种基于统计学习理论的分类器,即支持向量机,该分类器基于多类有向无环图的新方法,用于对四种类型的心电图信号进行分类。选择有向无环图支持向量机(DAGSVM)的动机是拥有更准确的分类器,同时减少计算成本。经验模式分解和随后的奇异值分解已用于计算特征向量矩阵。此外,五重交叉验证和粒子群优化已用于SVM模型参数的最佳选择,以提高DAGSVM的性能。在提出的算法和其他两个分类器(即K最近邻(KNN)和人工神经网络(ANN))之间进行了比较。 DAGSVM的平均准确度为98.96%,而KNN和ANN分别为95.83%和96.66%。获得的结果清楚地证明了DAGSVM方法优于其他分类器的优势。

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