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Gather customer concerns from online product reviews - a text summarization approach

机译:通过在线产品评论收集客户的关注-一种文本汇总方法

摘要

Product reviews possess critical information regarding customers' concerns and their experience with the product. Such information is considered essential to firms' business intelligence which can be utilized for the purpose of conceptual design, personalization, product recommendation, better customer understanding, and finally attract more loyal customers. Previous studies of deriving useful information from customer reviews focused mainly on numerical and categorical data. Textual data have been somewhat ignored although they are deemed valuable. Existing methods of opinion mining in processing customer reviews concentrates on counting positive and negative comments of review writers, which is not enough to cover all important topics and concerns across different review articles. Instead, we propose an automatic summarization approach based on the analysis of review articles' internal topic structure to assemble customer concerns. Different from the existing summarization approaches centered on sentence ranking and clustering, our approach discovers and extracts salient topics from a set of online reviews and further ranks these topics. The final summary is then generated based on the ranked topics. The experimental study and evaluation show that the proposed approach outperforms the peer approaches, i.e. opinion mining and clustering-summarization, in terms of users' responsiveness and its ability to discover the most important topics.
机译:产品评论包含有关客户关注的问题和他们对产品的使用经验的重要信息。这些信息被认为对公司的商业智能至关重要,可以用于概念设计,个性化,产品推荐,更好地了解客户并最终吸引更多忠实客户。从客户评论中获得有用信息的先前研究主要集中在数字和分类数据上。尽管文本数据被认为是有价值的,但还是被忽略了一些。在处理客户评论时,现有的观点挖掘方法集中于对评论作者的正面和负面评论进行计数,这不足以涵盖不同评论文章中的所有重要主题和关注点。取而代之的是,我们基于对评论文章内部主题结构的分析,提出了一种自动总结方法,以解决客户的疑虑。与现有的以句子排名和聚类为中心的摘要方法不同,我们的方法从一组在线评论中发现并提取重要主题,并进一步对这些主题进行排名。然后根据排名主题生成最终摘要。实验研究和评估表明,在用户的响应能力和发现最重要主题的能力方面,所提出的方法优于同类方法,即观点挖掘和聚类汇总。

著录项

  • 作者

    Zhan J; Loh HT; Liu Y;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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