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The heart plays a vital part in the functioning of living organisms, making the diagnosis and prediction of related diseases a matter of utmost importance. Approximately 17.9 million individuals succumb to cardiovascular complaint, counting for 32 of worldwide losses. This global significance highlights the importance of early detection, as timely treatment can significantly reduce heart disease-related mortality. Diagnostic errors may result in serious outcomes, such as exhaustion or even fatality. The increasing prevalence of heart-related diseases necessitates the development of precise prediction systems to enhance awareness. Machine learning, a subset of Artificial Intelligence (AI), offers robust tools for predicting various events based on patterns learned from natural occurrences. This research paper evaluates the accuracy of machine learning algorithms, specifically k- nearest neighbor, decision tree, linear regression, and support vector machine (SVM), in predicting heart disease. We utilize the UCI repository dataset for training and testing and employ the Python programming language through the Anaconda Jupyter notebook for implementation and the experimental findings indicate an accuracy rate of 92.8% using the heart disease prediction system, leveraging its extensive libraries and header files to ensure accuracy and precision in our analysis.
Published in: International Journal of Scientific Research in Computer Science Engineering and Information Technology
Volume 12, Issue 2, pp. 190-197