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Issue No.02 - March-April (2013 vol.28)
pp: 55-63
Cristina Bosco , University of Torino
Viviana Patti , University of Torino
Andrea Bolioli , CELI srl
ABSTRACT
Senti-TUT—an ongoing Italian project that investigates sentiment and irony in online political discussions—illustrates how to develop corpora for mining and analyzing opinion and sentiment in social media.
INDEX TERMS
Twitter, Pragmatics, Media, Blogs, Social network services, Context awareness, Syntactics, Emotion recognition, Natural language processing, irony, Twitter, Pragmatics, Media, Blogs, Social network services, Context awareness, Syntactics, Emotion recognition, Natural language processing, intelligent systems, corpora for sentiment analysis, opinion mining, social media
CITATION
Cristina Bosco, Viviana Patti, Andrea Bolioli, "Developing Corpora for Sentiment Analysis: The Case of Irony and Senti-TUT", IEEE Intelligent Systems, vol.28, no. 2, pp. 55-63, March-April 2013, doi:10.1109/MIS.2013.28
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