Computer Science ›› 2018, Vol. 45 ›› Issue (6A): 46-49.

• Review • Previous Articles     Next Articles

Research Status of Sentiment Analysis for Short Text
——From Social Media to Scarce Resource Language

YONG Tso1,2,SHI Xiao-dong2,NyimaTrashi1   

  1. School of Information Science and Engineering,Tibet University,Lhasa 850000,China1
    School of Information Science and Engineering,Xiamen University,Xiamen,Fujian 361005,China2
  • Online:2018-06-20 Published:2018-08-03

Abstract: With the gradual maturity of social networks,texts of various languages appear on social networks.These short texts contain praise and demand of people.They have important reference for the government and enterprises to understand the public opinion,which have significant value in research and application.First of all,the current research methods of sentiment analysis for Internet short text were summarized,including neural network,cross language and applied linguistics knowledge.Secondly,the current situation analysis was carried out in the hot spot field of sentiment analysis for short text.Finally,the research trend of sentiment analysis for short text was summarized,and the future was prospected.

Key words: Scarce resource language, Sentiment analysis, Short text, Social media

CLC Number: 

  • TP391.1
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