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Detection of Stance-Related Characteristics in Social Media Text

Author

Summary, in English

In this paper, we present a study for the identification of stancerelated features in text data from social media. Based on our previous work on stance and our findings on stance patterns, we detected stance-related characteristics in a data set from Twitter and Facebook. We extracted various corpus-, quantitative- and computational-based features that proved to be significant for six stance categories (contrariety, hypotheticality, necessity, prediction, source of knowledge, and uncertainty), and we tested them in our data set. The results of a preliminary clustering method are presented and discussed as a starting point for future contributions in the field. The results of our experiments showed a strong correlation between different characteristics and stance constructions, which can lead us to a methodology for automatic stance annotation of these data.

Department/s

Publishing year

2018-07-15

Language

English

Publication/Series

SETN '18 Proceedings of the 10th Hellenic Conference on Artificial Intelligence

Full text

  • - 544 kB

Links

Document type

Conference paper

Publisher

Association for Computing Machinery (ACM)

Topic

  • Comparative Language Studies and Linguistics

Keywords

  • stance-taking
  • text
  • clustering
  • feature extraction
  • social media

Conference name

The 10th Hellenic Conference on Artificial Intelligence

Conference date

2018-07-09 - 2018-07-15

Conference place

Patras, Greece

Status

Published

Project

  • StaViCTA - Advances in the description and explanation of stance in discourse using visual and computational text analytics

Research group

  • Language, Cognition and Discourse@Lund (LCD@L)

ISBN/ISSN/Other

  • ISBN: 978-1-4503-6433-1