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ID3 Decision Tree Classification: An Algorithmic Perspective based on Error rate

机译:ID3决策树分类:基于错误率的算法视角

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Classification in Data mining is a very important approach that is widely used in all the applications including medical diagnoses, agriculture, and other decision making systems. Data mining deals primarily with classification due to dynamic varieties of datasets available online today. Decision tree based classification is the foundation of all the classification algorithms and is extensively used by experts in all types of research. As ID3 decision tree algorithm has been used popularly for classification, this proposed work focuses on the implementation of ID3 algorithm with different standard UCI datasets and are also analyzed using statistical measures. The Error rate determines the misclassification of an algorithm and the splitting attribute. Hence, the ID3 algorithmic perspective was carried out in this proposed work by analyzing the error rate.
机译:数据挖掘中的分类是一种非常重要的方法,已广泛用于包括医学诊断,农业和其他决策系统在内的所有应用程序中。由于当今在线可用的数据集的动态多样性,数据挖掘主要处理分类。基于决策树的分类是所有分类算法的基础,并且被各类研究领域的专家广泛使用。由于ID3决策树算法已被广泛用于分类,因此本文提出的工作着重于ID3算法在不同标准UCI数据集上的实现,并使用统计方法进行了分析。错误率确定算法的错误分类和拆分属性。因此,通过分析错误率,在这项提议的工作中实现了ID3算法的观点。

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