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Classification and pattern discovery of mood in weblogs

Published: 21 June 2010 Publication History

Abstract

Automatic data-driven analysis of mood from text is an emerging problem with many potential applications Unlike generic text categorization, mood classification based on textual features is complicated by various factors, including its context- and user-sensitive nature We present a comprehensive study of different feature selection schemes in machine learning for the problem of mood classification in weblogs Notably, we introduce the novel use of a feature set based on the affective norms for English words (ANEW) lexicon studied in psychology This feature set has the advantage of being computationally efficient while maintaining accuracy comparable to other state-of-the-art feature sets experimented with In addition, we present results of data-driven clustering on a dataset of over 17 million blog posts with mood groundtruth Our analysis reveals an interesting, and readily interpreted, structure to the linguistic expression of emotion, one that comprises valuable empirical evidence in support of existing psychological models of emotion, and in particular the dipoles pleasure–displeasure and activation–deactivation.

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Published In

cover image Guide Proceedings
PAKDD'10: Proceedings of the 14th Pacific-Asia conference on Advances in Knowledge Discovery and Data Mining - Volume Part II
June 2010
514 pages
ISBN:3642136710
  • Editors:
  • Mohammed J. Zaki,
  • Jeffrey Xu Yu,
  • B. Ravindran,
  • Vikram Pudi

Sponsors

  • AOARD: Asian Office of Aerospace Research and Development
  • AFOSR: AFOSR
  • ONRGlobal: U.S. Office of Naval Research Global

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 21 June 2010

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