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@article{149187, author = {Shimpli Borkar and Priyal Dharmawat and Sonali Dobhal and Shloka Harne}, title = {Algorithms Used For Optimizing K-Means For Heart Disease Diagnosis }, journal = {International Journal of Innovative Research in Technology}, year = {}, volume = {6}, number = {11}, pages = {200-204}, issn = {2349-6002}, url = {https://ijirt.org/article?manuscript=149187}, abstract = {The heart is a significant organ of the human body. Life is reliant on the proper functioning of the heart. Most of the time is difficult to analyze a patient as a heart patient. For this purpose, data mining can be used to recognize a hidden clinical dataset. In this paper, we study to find ways to optimize the K-Means algorithm by overcoming its drawbacks which may help create a heart disease predicting system by applying it. Here, we present a study on the advanced data mining techniques and hybrid algorithms that could be used to optimize the K-Means and increase the prediction accuracy of the system of Heart disease prediction.}, keywords = {Heart disease, Data Mining, Clustering, K-Means.}, month = {}, }
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