№1, 2018

ABOUT METHODS OF ANALYZING THE TONALITY

Rasim M. Alguliyev, Irada Y. Alakbarova

The article overviews the interpretations of scientists on the theory of emotion and studies several systems analyzing the emotional tone of various types of information. A general conceptual model for assessing the emotional content of data stored in social media is given. The prospects for using Opinion Mining and Sentiment Analysis methods for analyzing emotions in the text are determined (pp.3-14).

Keywords: emotion, emotionology, social media, text tonality, Opinion Mining, Sentiment Analysis, Emoji language.
DOI : 10.25045/jpit.v09.i1.01
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