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Tweet sentiment: from classification to quantification

Conference Paper
Publication Date:
2015
abstract:
Sentiment classification has become a ubiquitous enabling technology in the Twittersphere, since classifying tweets according to the sentiment they convey towards a given entity (be it a product, a person, a political party, or a policy) has many applications in political science, social science, market research, and many others. In this paper we contend that most previous studies dealing with tweet sentiment classification (TSC) use a suboptimal approach. The reason is that the final goal of most such studies is not estimating the class label (e.g., Positive, Negative, or Neutral) of individual tweets, but estimating the relative frequency (a.k.a. "prevalence") of the different classes in the dataset. The latter task is called quantification, and recent research has convincingly shown that it should be tackled as a task of its own, using learning algorithms and evaluation measures different from those used for classification. In this paper we show, on a multiplicity of TSC datasets, that using a quantification-specific algorithm produces substantially better class frequency estimates than a state-of-the-art classification-oriented algorithm routinely used in TSC. We thus argue that researchers interested in tweet sentiment prevalence should switch to quantification-specific (instead of classification-specific) learning algorithms and evaluation measures
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Quantification; Learning
List of contributors:
Sebastiani, Fabrizio
Authors of the University:
SEBASTIANI FABRIZIO
Handle:
https://iris.cnr.it/handle/20.500.14243/334415
Full Text:
https://iris.cnr.it//retrieve/handle/20.500.14243/334415/127440/prod_344515-doc_159147.pdf
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URL

http://dl.acm.org/citation.cfm?id=2809327&CFID=734381158&CFTOKEN=34893976
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