WVEHDD: Weighted Voting based Ensemble System for Heart Disease Detection

Usha Rani Gogoi
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Abstract

Although several machine learning (ML) based algorithms are proposed by various researchers for Heart Disease detection (HDD), most of these works considered a very small experimental dataset to justify the efficiency of ML techniques in HDD. Moreover, despite of the low correlation of the features with the target, all the features were used for HDD. Considering the limitations of these existing systems, current study emphasizes on the designing of a Weighted Voting based Ensemble (WVE) Classifier for HDD from a sufficiently large dataset comprising of 1296 instances. Although there are 13 features, only 4 features are found to be statistically significant in HDD. For designing an efficient WVE classifier for HDD, the weighted votes of five efficient classifiers are combined to get the final decision. The experimental result shows that the proposed WVEHDD system outperforms the existing systems by providing the highest train accuracy of 96.15% and test accuracy of 95.64%
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WVEHDD:基于加权投票的心脏病检测集合系统
尽管不同的研究人员针对心脏病检测(HDD)提出了几种基于机器学习(ML)的算法,但这些工作大多考虑了很小的实验数据集,以证明 ML 技术在 HDD 中的效率。此外,尽管特征与目标的相关性很低,但所有特征都被用于 HDD。考虑到这些现有系统的局限性,目前的研究侧重于从一个由 1296 个实例组成的足够大的数据集中为 HDD 设计一个基于加权投票的集合(WVE)分类器。虽然有 13 个特征,但发现只有 4 个特征在 HDD 中具有统计意义。为了设计出适用于 HDD 的高效 WVE 分类器,我们将五个高效分类器的加权票数进行了合并,以得出最终结果。实验结果表明,提议的 WVEHDD 系统优于现有系统,其训练准确率最高,达到 96.15%,测试准确率最高,达到 95.64%。
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