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A Hybrid Model of Hierarchical Clustering and Decision Tree for Rule-based Classification of Diabetic Patients

机译:基于规则的糖尿病患者分类的层次聚类与决策树混合模型

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Hybrid models in data mining have recently gained attention including in the study of medical research. Various studies in this domain using hybrid models have shown different results. This paper presents the new hybrid model by exploring Agglomerative Hierarchical Clustering and Decision Tree Classifier on Pima Indians Diabetes dataset. The experiments compared performance accuracy of the Decision Tree Classifier against the same classifier augmented with Hierarchical Clustering. Results showed that the hybrid model achieved higher accuracy with 80.8% as compared to 76.9% of the standard model. This is a promising result for adoption of hierarchical clustering in a rule-based classifier.
机译:数据挖掘中的混合模型最近在医学研究中受到关注。使用混合模型在此领域的各种研究显示了不同的结果。本文通过在皮马印第安人糖尿病数据集上探索聚集层次聚类和决策树分类器,提出了新的混合模型。实验比较了决策树分类器与使用分层聚类增强的同一个分类器的性能准确性。结果表明,与标准模型的76.9%相比,混合模型的准确性更高,为80.8%。对于在基于规则的分类器中采用分层聚类而言,这是一个很有希望的结果。

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