基于PCA、模糊支持向量机和不平衡聚类的心律失常多类分类新方法

Mohamed Cherif Nait-Hamoud, A. Moussaoui
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引用次数: 16

摘要

本文提出了两种新的心电分类方法来区分五种心跳类型。第一种方法结合主成分分析(PCA)和改进的模糊一对一(MFOAO)方法进行多类分类。模糊一对一方法(FOAO)将n类分类问题转化为n(n-1)/2个两类问题,利用支持向量机进行二值分类。为了解决经典的一对一两两分类所产生的未分类区域问题,引入了该方法。改进的FOAO算法采用模糊支持向量机(FSVM)进行二值分类,剔除异常值。第二种方法集成了PCA、不平衡聚类(UC)和FOAO算法。采用主成分分析法提取信号的主特征并进行降维。采用UC算法丢弃异常值,用原型代替样本,减少训练集。本工作的第一个目标是比较两种新方法丢弃异常值的能力,并提高PCA和FOAO的分类性能;二是突出PCA-UC-FOAO组合方法在长期心电记录分类中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two novel methods for multiclass ECG arrhythmias classification based on PCA, fuzzy support vector machine and unbalanced clustering
In this paper we propose two novel methods of ECG classification to discriminate five heart beat types. The first approach combines principal component analysis (PCA) and modified fuzzy one-against-one (MFOAO) method for multiclass categorization. The fuzzy one-against-one method (FOAO) converts the n-class problem of classification to n(n-1)/2 two-class problems, and performs the binary classification with SVM. It was introduced to solve the problem of the unclassified regions induced by the classical pairwise classification one-against-one. Our novel modified algorithm of FOAO uses fuzzy support vector machine (FSVM) for the binary classification in order to discard outliers. The second approach integrates PCA, unbalanced clustering (UC) and FOAO algorithms. PCA is used to extract the principal characteristics of the signal and reduce its dimension. UC algorithm is used to discard outliers, and reduce the training set by replacing samples with prototypes. The first goal of this work is to compare the ability of the two novel methods to discard outliers and enhance the performance of the classification with PCA and FOAO; the second one is to highlight the efficiency of the combined method PCA-UC-FOAO in the classification of long term ECG records.
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