基于信息熵的决策树分类方法在网络营销中的应用

Xiaowei Li
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引用次数: 7

摘要

快速准确的客户分类是网络营销的核心。但是,普通的客户分类器存在一定的行业局限性,并不适合网络营销中的客户分类。提出了一种基于信息熵的决策树分类器。首先,综合几种常用的分类指标策略,建立了网络营销的分类指标体系。然后利用信息熵计算各分类指标的信息增益。最后,根据分类指标的信息增益建立决策树,生成相应的客户分类规则。为了检验这种方法,将真实的电子商务网站数据分为两部分。一种是建立客户分类决策树。另一个是用来测试的。实验结果表明,决策树的预测准确率约为97%,满足了实际分类工作的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Decision Tree Classification Method Based on Information Entropy to Web Marketing
The fast and accurate customer classifier is the core of Web marketing. But the common customer classifier doesn't fit for the customer classification in Web marketing, because it has certain industry limitation. In this paper, a decision tree classifier based on information entropy is proposed. First of all, the classification index system for Web marketing is established by integrating several common-used classification index strategies. After that, the information gain of each classification index is calculated by using information entropy. Finally, the decision tree is established according to the information gain of classification index, and the corresponding customer classification rule is generated. To test this method, the real e-commerce site data is divided into two parts. One is used to establish the customer classification decision tree. The other is used to test. The experiment result shows that the forecast accuracy of decision tree is about 97%, which meets the requirement of the actual classification work.
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