Sentiment Analysis of Twitter Data : A Survey
Keywords:
Sentiment analysis, Twitter, Data MiningAbstract
Sentiment analysis of Twitter data became a research tread the last decade. Among popular social networks portals, Twitter has been the point of attraction to several researcher in important areas like prediction of democratic several events, consumer brands, movie box-office, stock market, popularity of celebrities etc. The term sentiment refers to the feelings or opinion of person towards some particular domain. Analysis of sentiment (opinions) and its classification based on polarity is a challenging task. Other challenges are overwhelming amounts of information on one topic and they all are expressed on different ways. Lot of work has been done on sentiment analysis of Twitter data and lot needs to be done.There are many techniques for sentiment analysis. Supervised, unsupervised and combination of both of them.
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