An improved decision tree algorithm based on mutual information

Lietao Fang, Hong Jiang, Shuqi Cui
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引用次数: 7

Abstract

As a classical data mining algorithm, decision tree has a wide range of application areas. Most of the researches on decision tree are based on ID3 and its derivative algorithms, which are all based on information entropy. In this paper, as the most important key point of the decision tree, the metric of the split attribute is studied. The mutual information is introduced into decision tree classification. The results show that the decision tree classification model based on mutual information is a better classifier. Compared with the ID3 classifier based on information entropy, it is verified that the accuracy of the decision tree algorithm based on mutual information has been greatly improved, and the construction of the classifier is more rapid.
基于互信息的改进决策树算法
决策树作为一种经典的数据挖掘算法,有着广泛的应用领域。大多数关于决策树的研究都是基于ID3及其衍生算法,它们都是基于信息熵的。本文将分割属性的度量作为决策树最重要的关键点进行了研究。将互信息引入决策树分类中。结果表明,基于互信息的决策树分类模型是一种较好的分类器。与基于信息熵的ID3分类器相比,验证了基于互信息的决策树算法的准确率大大提高,并且分类器的构建速度更快。
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