THE IMPACT OF FEATURE SELECTION ON THE PROBABILISTIC MODEL ON ARRHYTHMIA DIAGNOSIS

M. Syarief, Mulaab Mulaab, H. Husni
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引用次数: 0

Abstract

Arrhythmia is a type of cardiac illness identified by an irregular heart rhythm that can be either too rapid or too slow. An electrocardiograph method is required to diagnose arrhythmia. Electrocardiogram, ECG, is the result of this Electrocardiograph process. The ECG is then utilized as a diagnostic tool for arrhythmia. Because the ECG data is so extensive, an adequate processing procedure is required. Understanding the ECG data can be done in various ways, one of which is classification. Naïve Bayes is a classification technique that can handle enormous amounts of data. ECG data has a lot of characteristics, which makes classification more difficult. Feature selection can be used to eliminate non-essential features from a dataset. This research aimed to determine the feature selection’s impact on the Naïve Bayes classification. It was proven by increased accuracy by 4%, precision by 0.13, recall by 0.13, and f-measure by 0.14. The computation time was 0.03 seconds faster. The highest performance was obtained by classification with 80 features. The accuracy was 93%, precision and recall were 0.45, f-measure was 0.42, and computation time was 0.10 seconds.
特征选择对概率模型对心律失常诊断的影响
心律失常是一种心脏疾病,其特征是心律不规律,可能太快或太慢。诊断心律失常需要心电图法。心电图(ECG)就是这一心电图过程的结果。然后心电图被用作心律失常的诊断工具。由于心电数据非常广泛,因此需要适当的处理程序。对心电数据的理解有多种方法,其中之一就是分类。Naïve贝叶斯是一种可以处理大量数据的分类技术。心电数据具有很多特征,这给分类带来了很大的困难。特征选择可以用来从数据集中消除非必要的特征。本研究旨在确定特征选择对Naïve贝叶斯分类的影响。结果表明,该方法的准确率提高了4%,精密度提高了0.13,召回率提高了0.13,f-measure提高了0.14。计算时间提高了0.03秒。对80个特征进行分类,获得了最高的性能。准确率为93%,精密度和召回率为0.45,f-measure为0.42,计算时间为0.10秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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