基于决策树和信息增益的网络产品虚假评论检测

S. S, A. Danti
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引用次数: 4

摘要

在线评论是顾客购买任何产品或获得服务的主要因素之一,从许多信息来源可以用来确定对产品的公众意见。虚假评论会被故意发布,以推动特定产品的网络流量。这些假评论者误导顾客,分散购买者的注意力。基于对审稿人内容的语义分析,提取审稿人的行为,以识别审稿人是否为假。在这项工作中,从网络中提取特定产品的评论,以及与评论者相关的其他几个信息的评论,使用决策树分类器和信息增益来识别假评论者。利用信息增益验证特征对决策的重要性。实验结果表明,本文提出的方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of fake opinions on online products using Decision Tree and Information Gain
Online reviews are one of the major factors for the customers to purchase any product or to get service from many sources of information that can be used to determine the public opinion on the products. Fake reviews will be published intentionally to drive the web traffic towards the particular products. These fake reviewers mislead the customers to distract the purchasers mind. Reviewers behaviors are extracted based the semantical analysis of his review content for the purpose of identifying the review as fake or not. In this work the reviews are extracted from the web for a particular product, along with the reviews of several other information related to the reviewers also been extracted to identify the fake reviewers using decision tree classifier and Information Gain. Significance of the features on the decision is validated using information gain. Experiments are conducted on exhaustive set of reviews extracted from the web and demonstrated the efficacy of the proposed approach.
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