基于属性重要性加权的改进ID3算法

Hongwu Luo, Yongjie Chen, Wendong Zhang
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引用次数: 10

摘要

针对ID3算法计算量大、拆分属性选择倾向于选择具有多个值的属性的问题,提出了一种基于信息熵和属性权重的改进算法。在改进算法中,结合泰勒定理和属性相似定理简化了熵的计算和属性重要度的确定,并完成了修正的信息增益作为属性选择的准则。实验对比结果证明,该算法可以提高分类速度,显著提高规则的准确率,并推导出更实用的规则用于应用。
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An Improved ID3 Algorithm Based on Attribute Importance-Weighted
For the problems of large computational complexity and splitting attribute selection inclining to choose the attribute which has many values in ID3 algorithm,this paper presents an improved algorithm based on the Information Entropy and Attribute Weights.In the improved algorithm,it has been combined with the Taylor's theorem and Attribute Similarity theorem to simplify the calculation of Entropy and determine the attribute importance weights,and an amended information gain is accomplished as the attribute selection criteria.The results of experiment comparison proved that the algorithm can improve the speed of classification, significantly improve the accuracy of rules, and derive more practical rules for applications.
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