基于文本挖掘的诚实评论检测与总结

Sathiya R. R, Monish Raaj L, Deekshan S, Arjun Dev P K, Aakash Muthiah S
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引用次数: 2

摘要

当涉及到购买和做出商业决策时,在线评论变得非常有价值。评论者可以提高品牌忠诚度,同时也可以帮助其他顾客了解他们的产品体验。随着网络评论变得越来越突出,欺诈性评论也变得越来越普遍。欺诈性评论指的是作者提交的评论,他们通过创造虚假评价来影响读者的看法,从而获得奖励。本研究论文旨在创建一个产品评论总结器,该总结器基于非虚假评论为亚马逊产品评论生成摘要。在目前的工作中,我们比较了带有SVD降维的监督机器学习算法和用于摘要的文本挖掘方法。使用标记的amazon评论数据集构建模型。本文提出了一种过滤掉虚假评论后给出亚马逊评论文本摘要的新思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Summarization of Honest Reviews Using Text Mining
When it comes to purchasing and making business decisions, online reviews have become incredibly valuable. The reviewer can boost brand loyalty while also assisting other customers in understanding their product experience. As internet reviews are becoming more prominent, fraudulent reviews which refer to reviews submitted by authors who are rewarded for creating fake evaluations to influence readers' perceptions, are becoming more common. This research paper aims to create a product review summarizer that generates a summary for amazon product reviews based on non-fake reviews. In the current work, we have compared supervised machine learning algorithms with SVD dimensionality reduction and a text mining approach for the summarization. The labeled amazon review dataset was used for building the model. This paper gives a novel idea of giving text summary of amazon reviews after filtering out the fake ones.
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