基于支持向量机的虚假评论检测

R. Poonguzhali, S. F. Sowmiya, P. Surendar, M. Vasikaran
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引用次数: 3

摘要

当今世界上发展最快的商业类别之一是网上购物。现在人们从网上购物网站买很多东西。顾客可以根据之前购买者对产品的评价来购买质量更好的产品。评论包括文本评论,评级和笑脸。在一个产品评论中,有数百条评论,其中一些评论可能是假评论。从自然语言中挖掘意见是评估客户情感的一种困难的方法,而情感分析提供了最好的答案。它为各个领域的决策提供了重要的数据。因此,我们提出了一种基于支持向量机的虚假评论检测系统,用于检测产品的虚假评论。主要目标是向用户推荐更高质量的产品。我们使用支持向量机算法将评论分为正面和负面两组。最后预测用户发布的虚假评论。这些评论分为负面、正面和中性。在这个系统中,只有已购买的用户可以发布评论,并且根据用户id和预订id验证重复。真正的评论被认为是产品推荐
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fake Reviews Detection using Support Vector Machine
One of the fastest expanding business categories in the world today is internet shopping. People nowadays buy a lot of things from internet shopping sites. Customers can buy a better quality products based on the reviews given by previous buyers of the products. Reviews includes text reviews, ratings and smileys. On a product review there are hundreds of reviews in which some of the reviews would be fake reviews. Opinion mining from natural languages is a difficult method for evaluating customers' sentiments, but sentiment analysis provides the best answer. It provides crucial data for decision-making in a variety of fields. So, we propose a fake reviews detection system using support vector machine which detect the fake reviews of the products. The primary goal is to suggest higher-quality products to the user. We use the support vector machine algorithm to classify the reviews into positive and negative groups. Finally fake reviews are predicted which are posted by the users. The reviews are grouped as negative, positive and neutral. In this system, only purchased users can post the reviews and duplicates are verified based on user id and booking id. Genuine reviews are considered for product recommendation
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