Simultaneously Identifying Opinion Targets and Opinion-bearing Words Based on Multi-Features in Chinese Micro-Blog Texts
We propose to simultaneously identify opinion targets and opinion-bearing words based on multi-features in Chinese micro-blog texts, i.e., to identify opinion-bearing words by means of opinion-bearing words dictionary and to identify opinion targets by considering multi-features between opinion targets and opinion-bearing words, and then we take a future step to optimize forwarding-based opinion target identification. We decompose our task into four phases: 1) construct opinion-bearing words dictionary and identify opinion-bearing word in a sentence from Chinese micro-blog; 2) design multiple features related to opinion target identification, containing token, Part-Of-Speech (POS), Word Distance (WD), Direct Dependency Relation (DDR) and SRL; 3) design three kinds of different feature templates to identify feature-opinion pairs
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