IMPLEMENTASI DATA MINING UNTUK MEMPREDIKSI PENYAKIT JANTUNG MENGGUNAKAN METODE K-NEAREST NEIGHBOR DAN LOGISTIC REGRESSION

Delima Sitanggang, Nicholas Nicholas, Verrell Wilson, Arwin Riko Apwinto Sinaga, Amos Daniel Simanjuntak
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引用次数: 2

Abstract

Heart attack disease is a condition where the arteries are blocked due to fatty deposits. This disease causes several symptoms such as shortness of breath, chest pain. In addition, this is also due to impaired blood flow to the heart that is blocked and can destroy the heart muscle. Until now, heart attack disease is still the leading cause of death in Indonesia. The problem faced today is that it is very difficult to predict heart disease and determine whether a person has heart disease. An appropriate method is needed to predict heart disease. The purpose of this study was to calculate the level of accuracy in predicting heart attack using the K-Nearest Neighbor and Logistic Regression methods. Based on the research and data processing that has been applied and the comparison of the K-Nearest Neighbor and Logistic Regression algorithms, the final results are the accuracy of the Logistic Regression Algorithm of 88% and the K-Nearest Neighbor algorithm of 83%. Thus it can be concluded that the Logistic Regression algorithm is the best in predicting heart attack disease than the K-Nearest Neighbor algorithm.
数据挖掘执行,使用K-NEAREST方法环境和逻辑回归来预测心脏病
心脏病是一种由于脂肪沉积导致动脉阻塞的疾病。这种病会引起呼吸短促、胸痛等症状。此外,这也是由于流向心脏的血液受到阻碍,可能会破坏心肌。到目前为止,心脏病仍然是印度尼西亚的主要死亡原因。今天面临的问题是,很难预测心脏病,也很难确定一个人是否患有心脏病。需要一种合适的方法来预测心脏病。本研究的目的是计算使用k近邻和逻辑回归方法预测心脏病发作的准确性水平。根据已经应用的研究和数据处理,以及k -最近邻算法和Logistic回归算法的比较,最终的结果是Logistic回归算法的准确率为88%,k -最近邻算法的准确率为83%。由此可见,Logistic回归算法在预测心脏病发作方面优于k近邻算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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