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Clustering Product Features for Opinion Mining

机译:聚集用于意见挖掘的产品功能

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摘要

In sentiment analysis of product reviews, one important problem is to produce a summary of opinions based on product features/attributes (also called aspects). However, for the same feature, people can express it with many different words or phrases. To produce a useful summary, these words and phrases, which are domain synonyms, need to be grouped under the same feature group. Although several methods have been proposed to extract product features from reviews, limited work has been done on clustering or grouping of synonym features. This paper focuses on this task. Classic methods for solving this problem are based on unsupervised learning using some forms of distributional similarity. However, we found that these methods do not do well. We then model it as a semi-supervised learning problem. Lexical characteristics of the problem are exploited to automatically identify some labeled examples. Empirical evaluation shows that the proposed method outperforms existing state-of-the-art methods by a large margin.
机译:在产品评论的情绪分析中,一个重要的问题是根据产品功能/属性(也称为方面)生成意见摘要。但是,对于同一功能,人们可以用许多不同的单词或短语来表达它。为了产生有用的摘要,需要将这些作为领域同义词的词和短语分组在同一功能组下。尽管已经提出了几种从评论中提取产品特征的方法,但是在对同义词特征进行聚类或分组方面所做的工作有限。本文着重于此任务。解决此问题的经典方法基于使用某种形式的分布相似性的无监督学习。但是,我们发现这些方法效果不佳。然后,我们将其建模为半监督学习问题。问题的词汇特征被用来自动识别一些带有标签的示例。实证评估表明,所提出的方法在很大程度上优于现有的最新方法。

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