2021
DOI: 10.4108/eai.30-8-2021.170881
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Prediction of Heart Disease using Biomedical Data through Machine Learning Techniques

Abstract: INTRODUCTION:Random Forests are an important model in machine learning. They are simple and very effective classification approach. The random forest identifies the most important features of a given problem. OBJECTIVES:The heart disease is cardiovascular disease, with a set of conditions affecting the heart. During heart disease, there will be heartbeat problems with congenital heart disorders and coronary artery defects. A coronary heart defect is a heart disease, which decreases the flow of blood to the hea… Show more

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Cited by 18 publications
(3 citation statements)
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“…Second, it offered a response rate that was 4% higher than that of the suggestion method, which was based solely on trust. The community-based proposed algorithm [30] that is being suggested currently consists of two different algorithms [31,32]. The first algorithm, which was a fuzzy clustering algorithm and was referred to as FCA, was responsible for classifying the location of a client or service.…”
Section: R E T R a C T E Dmentioning
confidence: 99%
“…Second, it offered a response rate that was 4% higher than that of the suggestion method, which was based solely on trust. The community-based proposed algorithm [30] that is being suggested currently consists of two different algorithms [31,32]. The first algorithm, which was a fuzzy clustering algorithm and was referred to as FCA, was responsible for classifying the location of a client or service.…”
Section: R E T R a C T E Dmentioning
confidence: 99%
“…The experimental findings illustrated that the RF framework had the best disease prediction accuracy, with a value of 84.03%. N. M. Lutimath et al, [29] used SVM to predict the HD from the HD patients dataset designed by the UCI ML repository. A. P. Pawlovsky et al, [30] introduced an ensemble method using KNN for diagnosing HD.…”
Section: Related Workmentioning
confidence: 99%
“…However, other experts believe that the market is expanding. Although the height can aid in the detection of melanoma, the absence of an increase eliminates the possibility of melanoma [25][26][27][28][29]. The majority of melanomas are discovered before they become visible in the United States.…”
Section: Introductionmentioning
confidence: 99%