Structural topic models for open-ended survey responses

  • Margaret E. Roberts
  • , Brandon M. Stewart
  • , Dustin Tingley
  • , Christopher Lucas
  • , Jetson Leder-Luis
  • , Shana Kushner Gadarian
  • , Bethany Albertson
  • , David G. Rand

    Research output: Contribution to journalArticlepeer-review

    1454 Scopus citations

    Abstract

    Collection and especially analysis of open-ended survey responses are relatively rare in the discipline and when conducted are almost exclusively done through human coding. We present an alternative, semiautomated approach, the structural topic model (STM) (Roberts, Stewart, and Airoldi 2013; Roberts et al. 2013), that draws on recent developments in machine learning based analysis of textual data. A crucial contribution of the method is that it incorporates information about the document, such as the author's gender, political affiliation, and treatment assignment (if an experimental study). This article focuses on how the STM is helpful for survey researchers and experimentalists. The STM makes analyzing open-ended responses easier, more revealing, and capable of being used to estimate treatment effects. We illustrate these innovations with analysis of text from surveys and experiments.

    Original languageEnglish
    Pages (from-to)1064-1082
    Number of pages19
    JournalAmerican Journal of Political Science
    Volume58
    Issue number4
    DOIs
    StatePublished - Oct 1 2014

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