Automatic Knowledge Extraction for Aspect-based Sentiment Analysis of Customer Reviews

Anh-Dung Vo, Quang-Phuoc Nguyen, Cheolyoung Ock
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引用次数: 6

Abstract

It is challenging to figure out the most common appraisal of an online product since there are too many reviews about it uploaded on the internet. Several research methods using opinion mining in the context of the online reviews have been suggested to solve this issue. The existing research on opinion mining can be classified into three general levels: document-level, sentence-level, and aspect-level sentiment analysis. Aspect-based evaluation is the most meaningful application in opinion mining, and researchers are getting more interested in product aspect extraction; however, more complex algorithms are needed to address this issue precisely with larger corpora. This paper introduces a method to automatically gain a knowledge-based system, which then is used to capture product aspects and corresponding opinions from a large number of product reviews in a specific domain. Our efforts tend to improve accuracy and the usefulness of review summaries by leveraging knowledge of product aspect extraction and provide both appropriate level of detail and richer representation capabilities.
基于方面的客户评论情感分析的自动知识提取
由于网上有太多的评论,所以很难找出对在线产品最普遍的评价。为了解决这一问题,本文提出了几种基于在线评论的意见挖掘研究方法。现有的意见挖掘研究大致可以分为三个层次:文档级、句子级和方面级情感分析。基于方面的评价是意见挖掘中最有意义的应用,产品方面的提取越来越受到研究者的关注;然而,对于更大的语料库,需要更复杂的算法来精确地解决这个问题。本文介绍了一种自动获取基于知识的系统的方法,该系统用于从特定领域的大量产品评论中获取产品方面和相应的意见。我们的工作倾向于通过利用产品方面提取的知识来提高评审摘要的准确性和有用性,并提供适当的细节级别和更丰富的表示能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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