Analyzing the impact of feature selection on the accuracy of heart disease prediction
Muhammad Salman Pathan, Avishek Nag, Muhammad Mohisn Pathan, and, Soumyabrata Dev

TL;DR
This paper investigates how feature selection influences the accuracy of heart disease prediction models, demonstrating that selecting relevant features improves classification performance and reduces training time.
Contribution
It introduces a comparative analysis of feature selection methods on heart disease datasets, highlighting their impact on model accuracy and efficiency.
Findings
Feature selection enhances classification accuracy.
Reduced feature sets lead to faster training.
Relevant features significantly impact model performance.
Abstract
Heart Disease has become one of the most serious diseases that has a significant impact on human life. It has emerged as one of the leading causes of mortality among the people across the globe during the last decade. In order to prevent patients from further damage, an accurate diagnosis of heart disease on time is an essential factor. Recently we have seen the usage of non-invasive medical procedures, such as artificial intelligence-based techniques in the field of medical. Specially machine learning employs several algorithms and techniques that are widely used and are highly useful in accurately diagnosing the heart disease with less amount of time. However, the prediction of heart disease is not an easy task. The increasing size of medical datasets has made it a complicated task for practitioners to understand the complex feature relations and make disease predictions. Accordingly,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
