Irony Detection in Twitter

Irony has been proven to be pervasive in social media, posing a challenge to sentiment analysis systems. It is a creative linguistic phenomenon where affect-related aspects play a key role. In this work, we address the problem of detecting irony in tweets, casting it as a classification problem. We propose a novel model that explores the use of affective features based on a wide range of lexical resources available for English, reflecting different facets of affect. Classification experiments over different corpora show that affective information helps in distinguishing among ironic and nonironic tweets. Our model outperforms the state of the art in almost all cases.

[1]  Deirdre Wilson,et al.  On verbal irony , 1992 .

[2]  Malvina Nissim,et al.  Overview of the Evalita 2014 SENTIment POLarity Classification Task , 2014 .

[3]  Reza Zafarani,et al.  Sarcasm Detection on Twitter: A Behavioral Modeling Approach , 2015, WSDM.

[4]  Skye McDonald,et al.  Neuropsychological Studies of Sarcasm , 2000 .

[5]  Janyce Wiebe,et al.  Recognizing Contextual Polarity in Phrase-Level Sentiment Analysis , 2005, HLT.

[6]  Maite Taboada,et al.  Analyzing Appraisal Automatically , 2004 .

[7]  Scott Nowson,et al.  Verbal irony use in personal blogs , 2013, Behav. Inf. Technol..

[8]  E. Winner,et al.  Why not say it directly? The social functions of irony , 1995 .

[9]  M. Walker,et al.  How can you say such things?!?: Recognizing Disagreement in Informal Political Argument , 2011 .

[10]  Tony Veale,et al.  Detecting Ironic Intent in Creative Comparisons , 2010, ECAI.

[11]  Po-Ya Angela Wang #Irony or #Sarcasm — A Quantitative and Qualitative Study Based on Twitter , 2013, PACLIC.

[12]  C. Whissell Using the Revised Dictionary of Affect in Language to Quantify the Emotional Undertones of Samples of Natural Language , 2009, Psychological reports.

[13]  Bing Liu,et al.  Mining and summarizing customer reviews , 2004, KDD.

[14]  R. Gibbs Irony in Talk Among Friends , 2000 .

[15]  Saif Mohammad,et al.  CROWDSOURCING A WORD–EMOTION ASSOCIATION LEXICON , 2013, Comput. Intell..

[16]  W. G. Parrott,et al.  Emotions in social psychology : essential readings , 2001 .

[17]  Mário J. Silva,et al.  Clues for detecting irony in user-generated contents: oh...!! it's "so easy" ;-) , 2009, TSA@CIKM.

[18]  Raymond W. Gibbs,et al.  Emotional Reactions to Verbal Irony , 2000 .

[19]  Elena Filatova,et al.  Irony and Sarcasm: Corpus Generation and Analysis Using Crowdsourcing , 2012, LREC.

[20]  Siobhan Chapman Logic and Conversation , 2005 .

[21]  Ari Rappoport,et al.  Semi-Supervised Recognition of Sarcasm in Twitter and Amazon , 2010, CoNLL.

[22]  E. Brown Irony , 1972, British journal of haematology.

[23]  Hsin-Hsi Chen,et al.  Chinese Irony Corpus Construction and Ironic Structure Analysis , 2014, COLING.

[24]  Nathalie Aussenac-Gilles,et al.  Towards a Contextual Pragmatic Model to Detect Irony in Tweets , 2015, ACL.

[25]  Joel D. Martin,et al.  Sentiment, emotion, purpose, and style in electoral tweets , 2015, Inf. Process. Manag..

[26]  Ofer Fein,et al.  Irony: Context and Salience , 1999 .

[27]  Tommaso Caselli,et al.  State of the Art Language Technologies for Italian: The EVALITA 2014 Perspective , 2015, Intelligenza Artificiale.

[28]  Philipp Cimiano,et al.  An Impact Analysis of Features in a Classification Approach to Irony Detection in Product Reviews , 2014, WASSA@ACL.

[29]  Laura Alba Juez,et al.  The evaluative palette of verbal irony , 2014 .

[30]  Paolo Rosso,et al.  Figurative messages and affect in Twitter: Differences between #irony, #sarcasm and #not , 2016, Knowl. Based Syst..

[31]  P. Young,et al.  Emotion and personality , 1963 .

[32]  Andrea Esuli,et al.  SentiWordNet 3.0: An Enhanced Lexical Resource for Sentiment Analysis and Opinion Mining , 2010, LREC.

[33]  Byron C. Wallace Computational irony: A survey and new perspectives , 2013, Artificial Intelligence Review.

[34]  Jun Hong,et al.  Sarcasm Detection on Czech and English Twitter , 2014, COLING.

[35]  Erik Cambria,et al.  The Hourglass of Emotions , 2011, COST 2102 Training School.

[36]  Diana Maynard,et al.  Who cares about Sarcastic Tweets? Investigating the Impact of Sarcasm on Sentiment Analysis. , 2014, LREC.

[37]  Byron C. Wallace,et al.  Sparse, Contextually Informed Models for Irony Detection: Exploiting User Communities, Entities and Sentiment , 2015, ACL.

[38]  Janyce Wiebe,et al.  +/-EffectWordNet: Sense-level Lexicon Acquisition for Opinion Inference , 2014, EMNLP.

[39]  Pushpak Bhattacharyya,et al.  Harnessing Context Incongruity for Sarcasm Detection , 2015, ACL.

[40]  J Aharon-Peretz,et al.  Impaired “Affective Theory of Mind” Is Associated with Right Ventromedial Prefrontal Damage , 2005, Cognitive and behavioral neurology : official journal of the Society for Behavioral and Cognitive Neurology.

[41]  Paolo Rosso,et al.  SemEval-2015 Task 11: Sentiment Analysis of Figurative Language in Twitter , 2015, *SEMEVAL.

[42]  Paolo Rosso,et al.  A multidimensional approach for detecting irony in Twitter , 2013, Lang. Resour. Evaluation.

[43]  S. Attardo Irony as relevant inappropriateness , 2000 .

[44]  Elisabetta Fersini,et al.  Detecting irony and sarcasm in microblogs: The role of expressive signals and ensemble classifiers , 2015, 2015 IEEE International Conference on Data Science and Advanced Analytics (DSAA).

[45]  Philip J. Stone,et al.  A computer approach to content analysis: studies using the General Inquirer system , 1963, AFIPS Spring Joint Computing Conference.

[46]  Ellen Riloff,et al.  Sarcasm as Contrast between a Positive Sentiment and Negative Situation , 2013, EMNLP.

[47]  Erik Cambria,et al.  SenticNet 3: A Common and Common-Sense Knowledge Base for Cognition-Driven Sentiment Analysis , 2014, AAAI.

[48]  Antal van den Bosch,et al.  Signaling sarcasm: From hyperbole to hashtag , 2015, Inf. Process. Manag..

[49]  Giovannantonio Forabosco Attardo, Salvatore (Ed.) (2014). Encyclopedia of humor studies. (Vols. 1-2). Thousand Oaks, California: SAGE Publications. , 2016 .

[50]  Albert Katz,et al.  When Sarcasm Stings , 2011 .

[51]  Cristina Bosco,et al.  Developing Corpora for Sentiment Analysis: The Case of Irony and Senti-TUT , 2013, IEEE Intelligent Systems.

[52]  Martha Palmer,et al.  Verb Semantics and Lexical Selection , 1994, ACL.

[53]  Pablo Gervás,et al.  SentiSense: An easily scalable concept-based affective lexicon for sentiment analysis , 2012, LREC.

[54]  Marilyn A. Walker,et al.  Really? Well. Apparently Bootstrapping Improves the Performance of Sarcasm and Nastiness Classifiers for Online Dialogue , 2013, ArXiv.

[55]  Horacio Saggion,et al.  Modelling Sarcasm in Twitter, a Novel Approach , 2014, WASSA@ACL.

[56]  Finn Årup Nielsen,et al.  A New ANEW: Evaluation of a Word List for Sentiment Analysis in Microblogs , 2011, #MSM.

[57]  R. Kreuz,et al.  Lexical Influences on the Perception of Sarcasm , 2007 .

[58]  P. Ekman An argument for basic emotions , 1992 .

[59]  Dipankar Das,et al.  Enhanced SenticNet with Affective Labels for Concept-Based Opinion Mining , 2013, IEEE Intelligent Systems.

[60]  James W. Pennebaker,et al.  Linguistic Inquiry and Word Count (LIWC2007) , 2007 .

[61]  Paolo Rosso,et al.  Applying Basic Features from Sentiment Analysis for Automatic Irony Detection , 2015, IbPRIA.

[62]  M. Bradley,et al.  Affective Norms for English Words (ANEW): Instruction Manual and Affective Ratings , 1999 .

[63]  David Bamman,et al.  Contextualized Sarcasm Detection on Twitter , 2015, ICWSM.

[64]  Alecia Wolf,et al.  Emotional Expression Online: Gender Differences in Emoticon Use , 2000, Cyberpsychology Behav. Soc. Netw..

[65]  Nina Wacholder,et al.  Identifying Sarcasm in Twitter: A Closer Look , 2011, ACL.

[66]  Paolo Rosso,et al.  On the difficulty of automatically detecting irony: beyond a simple case of negation , 2014, Knowledge and Information Systems.

[67]  P. Wilson,et al.  The Nature of Emotions , 2012 .

[68]  Albert N. Katz,et al.  The Differential Role of Ridicule in Sarcasm and Irony , 1998 .

[69]  Malvina Nissim,et al.  Proceedings of the 4th evaluation campaign of Natural Language Processing and Speech tools for Italian (EVALITA'14) , 2014 .