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Title Combining Strengths, Emotions and Polarities for Boosting Twitter Sentiment Analysis
Authors Felipe Bravo-Marquez, Marcelo Mendoza, Bárbara Poblete
Publication date 2013
Abstract Twitter sentiment analysis or the task of automatically
retrieving opinions from tweets has received an increasing interest from the
web mining community. This is due to its importance in a wide range of
fields such as business and politics. People express sentiments about
specific topics or entities with different strengths and intensities, where
these sentiments are strongly related to their personal feelings and
emotions. A number of methods and lexical resources have been proposed to
analyze sentiment from natural language texts, addressing different opinion
dimensions. In this article, we propose an approach for boosting Twitter
sentiment classification using different sentiment dimensions as meta-level
features. We combine aspects such as opinion strength, emotion and polarity
indicators, generated by existing sentiment analysis methods and resources.
Our research shows that the combination of sentiment dimensions provides
significant improvement in Twitter sentiment classification tasks such as
polarity and subjectivity.
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Pages article 2
Conference name International Workshop on Issues of Sentiment Discovery and Opinion Mining
Publisher ACM Press (New York, NY, USA)
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