Sentiment Polarity Classification of Trendy Topics
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Abstract
Twitter is becoming increasingly mainstream which make adequate preparation for
valuable user-generated information by sharing contents. Extracting topics trends from
twitter has drawn a lot of attention in recent epoch. Twitter data or tweets is often
growing rapidly with accelerating speed, which poses remarkable challenge to existing
topic extracting models and polarity classification. This thesispresents a novel approach
to find the sentiment polarity classification in trendy topics. First the topics trends are
determined and then the distribution of word is used to represent semantics of Twitter
streams grouped in certain time span to calculate the semantic relatedness of Twitter
streams to Wiki topics. The sentiment polarity classification of trendy topics is done by
obtaining a vector of weighted nodes from the WordNet graph. Final estimation of the
polarity is done in SentiWordNet using weights calculated from WordNet graph. The
proposed method provides a supervised solution independent of domain. It has been
experimentally evaluated that the proposed approach significantly improves the clarity of
topic trends.
