Detecting Irony And Sarcasm In Microblogs: The Role Of Expressive Signals And Ensemble Classifiers

PROCEEDINGS OF THE 2015 IEEE INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ADVANCED ANALYTICS (IEEE DSAA 2015)(2015)

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摘要
The automatic detection of sarcasm and irony in user generated contents is one of the most challenging task of Natural Language Processing. In this paper we address this problem by introducing Bayesian Model Averaging (BMA), an ensemble approach to take into account several classifiers according to their reliabilities and their marginal probability predictions. The impact of the most used expressive signals (pragmatic particles and POS tags) have been evaluated in baseline models (traditional classifiers and majority voting) as well as in the proposed BMA approach. Experimental results highlight two main findings: (1) not all the features are equally able to characterize sarcasm and irony and (2) BMA not only outperforms traditional state of the art models, but is also able to ensure notable generalization capabilities both on ironic and sarcastic text.
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关键词
microblogs,ensemble classifiers,sarcasm automatic detection,irony automatic detection,user generated contents,natural language processing,Bayesian model averaging,BMA,marginal probability predictions,expressive signals,pragmatic particles,POS tags,majority voting,ironic text,sarcastic text
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