利用ID3分类器对妊娠期糖尿病进行有效分类

Safa A. Hameed
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引用次数: 0

摘要

人工智能算法在医学领域,特别是在疾病诊断领域有着重要而有效的作用。本研究的重点是利用迭代二分法(ID3)分类器算法预测妊娠糖尿病的诊断,该算法用于妊娠糖尿病的识别;这是本研究中使用的最重要的算法之一。训练和测试是研究学习的两个关键阶段。这项研究采用了皮马印第安人糖尿病数据集,其中包括768名年龄在21岁及以上的女性,她们有8个已报告的特征。特征选择阶段、离散化步骤和使用分类器模型生成决策规则都是皮马印第安人糖尿病数据收集过程(糖尿病数据集)的一部分。在本研究中,采用决策树来开发基于糖尿病训练的分类器模型。迭代二分法(ID3)技术可用于运行决策树分类过程。使用决策规则对糖尿病进行测试,并从测试部分检索分类器实现混淆矩阵。该系统以94%的准确率提供了高质量的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Method of Classification the Gestational Diabetes Using ID3 Classifier
Artificial intelligence algorithms have an important and effective role in the medical field, especially in the field of diagnosing diseases. This research focuses on predicting the diagnosis of gestational diabetes by using the Iterative Dichotomiser3 (ID3) classifier algorithm, which is utilized to identify gestational diabetes; it was one of the most significant algorithms employed in this study. Training and testing are two critical phases of the research study. This study employed the Pima Indians Diabetes dataset, which comprised 768 women aged 21 and abovewith the eight reported traits. A feature selection stage, a discretization step, and using the classifier model for producing decision rules are all part of the Pima Indians diabetes data gathering process (Diabetes Dataset). In this study, the decision tree is employed to develop the classifier model, which is based on Diabetes training. The Iterative Dichotomiser3 (ID3) technique may be used to run the decision tree classification process. Diabetes is tested using decision rules, and the classifier implementation confusion matrix was retrieved from the testing portion. The system delivered high-quality results with a 94 percent accuracy rate.
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