Content area

Abstract

Issue Title: Special Issues: "Collaboratively Constructed Language Resources" and "Analysis of short texts on the Web"

Irony is a pervasive aspect of many online texts, one made all the more difficult by the absence of face-to-face contact and vocal intonation. As our media increasingly become more social, the problem of irony detection will become even more pressing. We describe here a set of textual features for recognizing irony at a linguistic level, especially in short texts created via social media such as Twitter postings or "tweets". Our experiments concern four freely available data sets that were retrieved from Twitter using content words (e.g. "Toyota") and user-generated tags (e.g. "#irony"). We construct a new model of irony detection that is assessed along two dimensions: representativeness and relevance. Initial results are largely positive, and provide valuable insights into the figurative issues facing tasks such as sentiment analysis, assessment of online reputations, or decision making.[PUBLICATION ABSTRACT]

Details

Title
A multidimensional approach for detecting irony in Twitter
Author
Reyes, Antonio; Rosso, Paolo; Veale, Tony
Pages
239-268
Publication year
2013
Publication date
Mar 2013
Publisher
Springer Nature B.V.
ISSN
1574020X
e-ISSN
1574-0218
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1314563868
Copyright
Springer Science+Business Media Dordrecht 2013