Fine-grained sentiment analysis of reviews using shallow semantic information

Hanxiao Shi, Yahui Zhang, Yiqian Zou, Xiaojun Li
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Abstract

There is a growing interest in sharing personal opinions on the Web, such as product reviews, economic analysis, political polls, etc. Existing research focuses on document-based approaches and documents are represented by bag-of-word. However, due to loss of contextual information, this representation fails to capture the associative information between an opinion and its corresponding target. Additionally, several researches focus on sentence-based approaches, which can effectively deal with an attribute-sentiment word pair within one sentence. However, those approaches are unable to process more than one attribute within one sentence. In this paper, we first present an improved sentiment word quantitative method to generate sentiment score for every word in sentiment lexicon. Additionally, we propose a novel identification approach of attribute-modifier-sentiment word triple using shallow semantic information. Experimental results show the feasibility and effectiveness of our approach.
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使用浅层语义信息对评论进行细粒度情感分析
人们对在网络上分享个人观点越来越感兴趣,比如产品评论、经济分析、政治民意调查等。现有的研究主要集中在基于文档的方法上,文档用词袋表示。然而,由于上下文信息的丢失,这种表示无法捕获意见与其相应目标之间的关联信息。此外,一些研究集中在基于句子的方法上,该方法可以有效地处理一个句子中的属性-情感词对。然而,这些方法无法在一个句子中处理多个属性。本文首先提出了一种改进的情感词量化方法,对情感词典中的每个词生成情感分数。此外,我们还提出了一种基于浅语义信息的属性-修饰语-情感词三元组识别方法。实验结果表明了该方法的可行性和有效性。
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