Computer Engineering & Science
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XIE Song-xian1,ZHAO Shu-yi2
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The performance of sentiment analysis can be improved effectively with the help of a wide-coverage and good domain-adapting sentiment lexicon. We firstly design two Chinese sentiment lexicon extension algorithms, which base on conjunctions feature and POS-vector statistical feature respectively. We then propose an integrated mixing feature method that combines the two algorithms. Fine-grained positive and negative values can be calculated for opinion words, the coverage of the lexicon can be improved within a domain, and the adaption of the lexicon can be improved with adjustment in the domain. Experimental results show that the extension lexicon has wider coverage and better adaption than a general lexicon in a domain, and the proposal's performance of sentiment classification can approximate that of a supervised method.
XIE Song-xian1,ZHAO Shu-yi2. A Chinese sentiment lexicon extension method based on mixing features [J]. Computer Engineering & Science.
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URL: http://joces.nudt.edu.cn/EN/
http://joces.nudt.edu.cn/EN/Y2016/V38/I07/1502