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Product Aspect Clustering by Incorporating Background Knowledge for Opinion Mining

机译:通过结合背景知识进行观点挖掘的产品方面聚类

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摘要

Product aspect recognition is a key task in fine-grained opinion mining. Current methods primarily focus on the extraction of aspects from the product reviews. However, it is also important to cluster synonymous extracted aspects into the same category. In this paper, we focus on the problem of product aspect clustering. The primary challenge is to properly cluster and generalize aspects that have similar meanings but different representations. To address this problem, we learn two types of background knowledge for each extracted aspect based on two types of effective aspect relations: relevant aspect relations and irrelevant aspect relations, which describe two different types of relationships between two aspects. Based on these two types of relationships, we can assign many relevant and irrelevant aspects into two different sets as the background knowledge to describe each product aspect. To obtain abundant background knowledge for each product aspect, we can enrich the available information with background knowledge from the Web. Then, we design a hierarchical clustering algorithm to cluster these aspects into different groups, in which aspect similarity is computed using the relevant and irrelevant aspect sets for each product aspect. Experimental results obtained in both camera and mobile phone domains demonstrate that the proposed product aspect clustering method based on two types of background knowledge performs better than the baseline approach without the use of background knowledge. Moreover, the experimental results also indicate that expanding the available background knowledge using the Web is feasible.
机译:产品方面的识别是细化意见挖掘中的关键任务。当前的方法主要集中在从产品评论中提取方面。但是,将同义提取的方面聚类到同一类别也很重要。在本文中,我们关注产品方面聚类的问题。主要的挑战是适当地聚类和归纳具有相似含义但表示形式不同的方面。为了解决这个问题,我们基于两种有效的方面关系为每个提取的方面学习两种背景知识:相关方面关系和不相关方面关系,它们描述了两个方面之间的两种不同类型的关系。基于这两种类型的关系,我们可以将许多相关和不相关的方面分配给两个不同的集合,作为描述每个产品方面的背景知识。为了获得每个产品方面的丰富背景知识,我们可以通过Web上的背景知识来丰富可用信息。然后,我们设计了一种层次聚类算法,将这些方面分为不同的组,其中使用每个产品方面的相关方面和不相关方面集来计算方面相似度。在相机和手机领域获得的实验结果表明,基于两种背景知识的拟议产品方面聚类方法比不使用背景知识的基线方法具有更好的性能。此外,实验结果还表明使用Web扩展可用的背景知识是可行的。

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