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Opinion mining using ensemble text hidden Markov models for text classification

Expert systems with applications, v.94, 2018년, pp.218 - 227  

Kang, Mangi (Corresponding author.) ,  Ahn, Jaelim ,  Lee, Kichun

Abstract AI-Helper 아이콘AI-Helper

With the rapid growth of social media, text mining is extensively utilized in practical fields, and opinion mining, also known as sentiment analysis, plays an important role in analyzing opinion and sentiment in texts. Methods in opinion mining generally depend on a sentiment lexicon, which is a set...

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참고문헌 (24)

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