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Performance Analysis of Heart Disease Classification for Computer Diagnosis System

机译:心脏病分类计算机诊断系统的性能分析

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with the widespread increment in the heart stroke rates at adolescent ages, we have to set up a framework to have the option to distinguish the beginning side effects of a coronary illness to anticipate it. It is impractical for a economic people in developing countries to frequently undergo expensive tests like the ECG and thus there needs to be a crepitation machine learning algorithm in place which is convenient and simultaneously solid, in anticipating the odds of a coronary illness. This can be used to predict the vulnerability of a heart disease for the given symptoms like age, sex, pulse rate etc. Classification is one of the most commonly used tool analyze and classify the data. This paper analyzes the different classifier algorithms such as SVM, KNN and MLP for seer heart disease dataset using WEKA 3.8 software. The performance of the classifiers is evaluated against the parameters like classification accuracy, MCC, Precision, Recall, F-Measure, ROC and so on. SVM Classifier is superior to KNN and MLP and it achieves the highest classification accuracy of 85.9% with minimum false positive of 15.3%.
机译:随着青少年时代的心脏冲程速率普遍增长,我们必须建立一个框架,可以选择区分冠状动脉疾病的开始副作用以预期它。发展中国家的经济人员经常经常接受像心电图的昂贵的测试,这是一种不切实际的,因此需要是一种折射机学习算法,其适用于冠状动脉疾病的几率而方便且同时坚固。这可用于预测患有年龄,性别,脉搏率等特定症状的心脏病的脆弱性是分类是最常用的工具分析和分类数据之一。本文使用Weka 3.8软件分析了SVM,KNN和MLP等不同分类器算法,如SVM,KNN和MLP。根据分类精度,MCC,精度,召回,F测量,ROC等参数评估分类器的性能。 SVM分类器优于KNN和MLP,它达到了85.9%的最高分类精度,最小误报为15.3%。

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