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Machine Learning Based Classification Models for Heart Disease Prediction
Author(s) -
N. Karthikeyan,
P. C. Harish Padmanaban,
A. Prasanth,
D Ragunath
Publication year - 2021
Publication title -
journal of physics. conference series
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.21
H-Index - 85
eISSN - 1742-6596
pISSN - 1742-6588
DOI - 10.1088/1742-6596/1916/1/012092
Subject(s) - artificial intelligence , machine learning , classifier (uml) , support vector machine , computer science , decision tree , logistic regression , exhibition , field (mathematics) , mathematics , archaeology , pure mathematics , history
Coronary illness is one of the intricate sicknesses and all around the world numerous individuals experienced this infection. On schedule and effective recognizable proof of coronary illness assumes a critical part in medical care, especially in the field of cardiology. In this article, a productive and exact framework approach is reported to analysis coronary illness, and the framework depends on AI strategies. The framework is created dependent on grouping calculations incorporates Support vector machine, Logistic relapse, Artificial neural organization, K-closest neighbor, Naïve straights, and Decision tree while standard highlights determination calculations have been utilized, for example, Relief, Minimal excess maximal importance, Least supreme shrinkage choice administrator and Local learning for eliminating immaterial and repetitive highlights. In addition, it processes a quick restrictive shared data highlight choice calculation to tackle include determination issue. The highlights determination calculations are utilized for highlights choice to expand the characterization precision and diminish the execution season of grouping framework. Besides, the leave one subject out cross-approval strategy has been utilized for learning the prescribed procedures of model evaluation and for hyper parameter tuning. The presentation estimating measurements are utilized for appraisal of the exhibitions of the classifiers. The exhibitions of the classifiers have been kept an eye on the chose highlights as chosen by highlights choice calculations. The exploratory outcomes show that the proposed highlight choice calculation (FCMIM) is attainable with classifier uphold vector machine for planning a significant level shrewd framework to recognize coronary illness. The recommended finding framework (FCMIM-SVM) accomplished great exactness when contrasted with recently proposed strategies. Also, the proposed framework can without much of a stretch be executed in medical services for the distinguishing proof of coronary illness.

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