Summarizing consumer reviews

被引:0
|
作者
Michael Peal
Md Shafaeat Hossain
Jundong Chen
机构
[1] Southern Connecticut State University,Department of Computer Science
[2] Dickinson State University,Department of Math and Computer Science
关键词
Aspect-based sentiment analysis; Topic extraction; Language summarization; Amazon consumer reviews; Affective computing;
D O I
暂无
中图分类号
学科分类号
摘要
E-commerce giants like Amazon rely on consumer reviews to allow buyers to inform other potential buyers about a product’s pros and cons. While these reviews can be useful, they are less so when the number of reviews is large; no consumer can be expected to read hundreds or thousands of reviews in order to gain better understanding about a product. In an effort to provide an aggregate representation of reviews, Amazon offers an average user rating represented by a 1- to 5-star score. This score only represents how reviewers feel about a product without providing insight into why they feel that way. In this work, we propose an AI technique that generates an easy-to-read, concise summary of a product based on its reviews. It provides an overview of the different aspects reviewers emphasize in their reviews and, crucially, how they feel about those aspects. Our methodology generates a list of the topics most-mentioned by reviewers, conveys reviewer sentiment for each topic and calculates an overall summary score that reflects reviewers’ overall sentiment about the product. These sentiment scores adapt the same 1- to 5-star scoring scale in order to remain familiar to Amazon users.
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页码:193 / 212
页数:19
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