Dhanalakshmi Srinivasan Engineering College, Perambalur, India
SRM Institute of Science and Technology, Chennai, India
School of Computer Science and Engineering, VIT-AP University, Amaravathi, Andhra Pradesh, India
Department of Computer Science and Engineering, Velammal College of Engineering and Technology, Madurai, India
Department of Information Technology, Karpagam College of Engineering, Coimbatore, India
Heart disease is an illness that influences enormous people worldwide. Particularly in cardiology, heart disease diagnosis and treatment need to happen quickly and precisely. Here, a machine learning-based (ML) approach is anticipated for diagnosing a cardiac disease that is both effective and accurate. The system was developed using standard feature selection algorithms for removing unnecessary and redundant features. Here, a novel normalized graph model (n-GM) is used for prediction. To address the issue of feature selection, this work considers the significant information feature selection approach. To improve classification accuracy and shorten the time it takes to process classifications, feature selection techniques are utilized. Furthermore, the hyper-parameters and learning techniques for model evaluation have been accomplished using cross-validation. The performance is evaluated with various metrics. The performance is evaluated on the features chosen via features representation. The outcomes demonstrate that the suggested n-GM gives 98% accuracy for modeling an intelligent system to detect heart disease using a classifier support vector machine
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