基于k均值和决策树的2型糖尿病混合预测模型

Wenqian Chen, Shuyu Chen, Hancui Zhang, Tianshu Wu
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引用次数: 70

摘要

2型糖尿病在全世界的发病率都很高。为了预防和治疗2型糖尿病,需要早期发现。目前,数据挖掘技术以其分类能力在医学诊断领域得到越来越多的重视。本文提出了一种有助于2型糖尿病诊断的混合预测模型。在该模型中,使用K-means进行数据约简,使用J48决策树作为分类器进行分类。为了得到实验结果,我们使用了UCI机器学习库中的皮马印第安人糖尿病数据集。结果表明,与文献中提及的其他研究相比,所提出的模型达到了更好的精度。结果表明,该模型有助于2型糖尿病的诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid prediction model for type 2 diabetes using K-means and decision tree
Type 2 diabetes has a quite high incidence all over the world. For the prevention and treatment of Type 2 diabetes, early detection is demanded. Nowadays, data mining techniques are gaining increasing importance in medical diagnosis field by their classification capability. In this paper, a hybrid prediction model is proposed to help the diagnosis of Type 2 diabetes. In the proposed model, K-means is used for data reduction with J48 decision tree as a classifier for classification. In order to get the experimental result, we used the Pima Indians Diabetes Dataset from UCI Machine Learning Repository. The result shows that the proposed model has reached better accuracy compared to other previous studies that mentioned in the literature. On the basis of the result, it can be proven that the proposed model would be helpful in Type 2 diabetes diagnosis.
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