用机器学习方法改进支持向量机预测糖尿病的能力

Christine Dewi, Jernius Zendrato, Henoch Juli Christanto
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引用次数: 0

摘要

由于压力增大和缺乏体育锻炼导致肥胖和高血压等相关并发症,目前全世界包括印度尼西亚在内的糖尿病发病率都在上升。然而,只有约25%的糖尿病患者知道自己的病情。因此,本研究旨在利用从 Kaggle 获取的糖尿病数据集,找到一种能帮助提高预测准确度的算法。为了获得有关糖尿病诊断准确度的信息,我们将使用两种方法处理数据,即支持向量机和天真的贝叶斯。为了获得最准确的结果,我们对所用算法的每个变体和参数进行了优化。本研究中的最佳方法是带有径向基函数(RBF)核的支持向量机方法,其准确率达到了 98.25%,优于准确率最高的天真贝叶斯方法,后者的准确率仅为 77.25%。此外,本研究还利用从 Kaggle 网站获取的 LAB01 DAT263x 糖尿病数据集应用了所提出的方法。实验结果表明,所建议的模型在性能方面优于其他方法,在所有数据集的每次实验中都呈现出高准确率的趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of support vector machine for predicting diabetes mellitus with machine learning approach
The prevalence of diabetes is currently increasing worldwide, including in Indonesia, due to the increasing levels of stress and lack of physical activity that led to obesity and related complications such as hypertension. However, only about 25% of diabetes patients are aware of their condition. Therefore, this study aims to find an algorithm that can help predict with better accuracy using the diabetes mellitus dataset obtained from Kaggle. To obtain information about the accuracy level of diabetes diagnosis, the data will be processed using two methods, namely support vector machine and naive bayes. To obtain the most accurate results, we optimize each variant and parameter of every algorithm used. The best method in this study was produced by the support vector machine method with a radial basis function (RBF) kernel, which achieved an accuracy level of 98.25%, superior to the naive bayes method which obtained the highest accuracy of only 77.25%. Additionally, this study also applied the proposed method using the diabetes mellitus dataset from LAB01 DAT263x taken from the Kaggle website. The results of the experiment indicate that the suggested model outperforms other methods in terms of performance, with a tendency for high accuracy generated in every experiment for all datasets.
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