The emergence of social media brings chances, but also challenges, to linguistic analysis. In this paper we investigate a novel problem of discovering patterns based on emotion and the association of moods and affective lexicon usage in blogosphere, a representative for social media. We propose the use of normative emotional scores for English words in combination with a psychological model of emotion measurement and a nonparametric clustering process for inferring meaningful emotion patterns automatically from data. Our results on a dataset consisting of more than 17 million mood-groundtruthed blogposts have shown interesting evidence of the emotion patterns automatically discovered that match well with the core-affect emotion model theorized by psychologists. We then present a method based on information theory to discover the association of moods and affective lexicon usage in the new media.
History
Pagination
43-48
Location
Uppsala, Sweden
Start date
2010-07-13
End date
2010-07-13
Language
eng
Publication classification
EN.1 Other conference paper
Copyright notice
2010, Association for Computational Linguistics
Editor/Contributor(s)
[Unknown]
Title of proceedings
ACLstudent '10 : Proceedings of the ACL 2010 Student Research Workshop
Event
Association for Computational Linguistics. Workshop (2010 : Uppsala, Sweden)
Publisher
Association for Computational Linguistics
Place of publication
Stroudsburg, Pa.
Series
Association for Computational Linguistics Workshop