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Expanding Domain Sentiment Lexicon through Double Propagation

机译:通过双重传播扩展域情绪词典

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In most sentiment analysis applications, the sentiment lexicon plays a key role. However, it is hard, if not impossible, to collect and maintain a universal sentiment lexicon for all application domains because different words may be used in different domains. The main existing technique extracts such sentiment words from a large domain corpus based on different conjunctions and the idea of sentiment coherency in a sentence. In this paper, we propose a novel propagation approach that exploits the relations between sentiment words and topics or product features that the sentiment words modify, and also sentiment words and product features themselves to extract new sentiment words. As the method propagates information through both sentiment words and features, we call it double propagation. The extraction rules are designed based on relations described in dependency trees. A new method is also proposed to assign polarities to newly discovered sentiment words in a domain. Experimental results show that our approach is able to extract a large number of new sentiment words. The polarity assignment method is also effective.
机译:在大多数情感分析应用中,情绪词典发挥着关键作用。但是,如果不是不可能,则难以收集和维护所有应用域的普遍情绪词典,因为可以在不同的域中使用不同的单词。主要现有技术基于不同的连词和句子中情感一致性的思想,从大型域语料库中提取这些情绪词语。在本文中,我们提出了一种新颖的传播方法,利用情绪词语和主题或产品特征之间的关系,即情绪单词修改,以及情绪单词和产品特征本身以提取新的情绪词语。由于该方法通过两种情绪单词和功能传播信息,因此我们称之为双重传播。提取规则是基于依赖树中描述的关系设计的。还提出了一种新方法来将极性分配给域中的新发现的情绪单词。实验结果表明,我们的方法能够提取大量新的情绪词语。极性分配方法也是有效的。

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