SAE:从产品评论中提取基于语法的方面和意见

W. Maharani, D. H. Widyantoro, M. L. Khodra
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引用次数: 10

摘要

面向抽取是情感分析中的一项重要任务,用于识别顾客评价产品中的面向。大多数现有的工作都是手动或使用启发式方法定义模式集。在本文中,我们提出了一种基于句法的方面提取方法SAE,该方法使用决策树和规则学习来生成基于序列标记的模式集。我们使用基于模式的方法和类型依赖对方面提取进行了全面的分析。这些模式将用于识别和提取客户产品评审中的方面术语候选项。首先,我们基于序列标记,使用决策树和规则学习(如ID3、J48、Random tree、Part和Prism)生成识别方面术语候选的模式集。该模式集用于生成方面术语候选项。我们使用正面和负面意见词典列表作为方面词候选过滤。最后,我们将基于模式的方法与类型依赖相结合,以去除不相关的方面项。结果表明,基于模式和类型依赖相结合可以提高性能。然而,由于我们的工作是基于基于语法的方法,它可以用于其他领域,预计将包括无限的领域数据集。
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SAE: Syntactic-based aspect and opinion extraction from product reviews
Aspect extraction is an important task in sentiment analysis to identify aspects in customer review products. Most existing works defines the pattern set manually or using heuristic approach. In this paper, we propose SAE, a Syntactical-based Aspect Extraction using decision tree and rule learning to generate the pattern set based on sequence labelling. We provide a comprehensive analysis of aspect extraction using pattern-based method and typed-dependency. The patterns will be used to identify and extract aspect term candidates in customer product review. First, we generate pattern set that identify aspect term candidates using decision tree and rule learning such as ID3, J48, Random Tree, Part and Prism, based on sequence labelling. The set of pattern is employed to produced aspect term candidates. We use a list of positive and negative opinion lexicon as aspect term candidates filtering. Finally, we combine the pattern-based method with typed dependency to remove irrelevant aspect term. The results showed that the combination of pattern-based and typed dependency can increase the performance. However, since our work is based on syntactic-based approach, it can be used to other domains, that is expected to include an unlimited domain datasets.
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