Article Version of Record

Validating automated integrative complexity: Natural language processing and the Donald Trump Test

Author(s) / Creator(s)

Conway, Lucian Gideon
Conway, Kathrene R.
Houck, Shannon C.

Abstract / Description

Computer algorithms that analyze language (natural language processing systems) have seen a great increase in usage recently. While use of these systems to score key constructs in social and political psychology has many advantages, it is also dangerous if we do not fully evaluate the validity of these systems. In the present article, we evaluate a natural language processing system for one particular construct that has implications for solving key societal issues: Integrative complexity. We first review the growing body of evidence for the validity of the Automated Integrative Complexity (AutoIC) method for computer-scoring integrative complexity. We then provide five new validity tests: AutoIC successfully distinguished fourteen classic philosophic works from a large sample of both lay populations and political leaders (Test 1) and further distinguished classic philosophic works from the rhetoric of Donald Trump at higher rates than an alternative system (Test 2). Additionally, AutoIC successfully replicated key findings from the hand-scored IC literature on smoking cessation (Test 3), U.S. Presidents’ State of the Union Speeches (Test 4), and the ideology-complexity relationship (Test 5). Taken in total, this large body of evidence not only suggests that AutoIC is a valid system for scoring integrative complexity, but it also reveals important theory-building insights into key issues at the intersection of social and political psychology (health, leadership, and ideology). We close by discussing the broader contributions of the present validity tests to our understanding of issues vital to natural language processing.

Keyword(s)

Automated Integrative Complexity integrative complexity natural language processing AutoIC

Persistent Identifier

Date of first publication

2020-09-02

Journal title

Journal of Social and Political Psychology

Volume

8

Issue

2

Page numbers

504–524

Publisher

PsychOpen GOLD

Publication status

publishedVersion

Review status

peerReviewed

Is version of

Citation

Conway, L. G., Conway, K. R., & Houck, S. C. (2020). Validating automated integrative complexity: Natural language processing and the Donald Trump Test. Journal of Social and Political Psychology, 8(2), 504-524. https://doi.org/10.5964/jspp.v8i2.1307
  • Author(s) / Creator(s)
    Conway, Lucian Gideon
  • Author(s) / Creator(s)
    Conway, Kathrene R.
  • Author(s) / Creator(s)
    Houck, Shannon C.
  • PsychArchives acquisition timestamp
    2022-04-14T11:23:53Z
  • Made available on
    2022-04-14T11:23:53Z
  • Date of first publication
    2020-09-02
  • Abstract / Description
    Computer algorithms that analyze language (natural language processing systems) have seen a great increase in usage recently. While use of these systems to score key constructs in social and political psychology has many advantages, it is also dangerous if we do not fully evaluate the validity of these systems. In the present article, we evaluate a natural language processing system for one particular construct that has implications for solving key societal issues: Integrative complexity. We first review the growing body of evidence for the validity of the Automated Integrative Complexity (AutoIC) method for computer-scoring integrative complexity. We then provide five new validity tests: AutoIC successfully distinguished fourteen classic philosophic works from a large sample of both lay populations and political leaders (Test 1) and further distinguished classic philosophic works from the rhetoric of Donald Trump at higher rates than an alternative system (Test 2). Additionally, AutoIC successfully replicated key findings from the hand-scored IC literature on smoking cessation (Test 3), U.S. Presidents’ State of the Union Speeches (Test 4), and the ideology-complexity relationship (Test 5). Taken in total, this large body of evidence not only suggests that AutoIC is a valid system for scoring integrative complexity, but it also reveals important theory-building insights into key issues at the intersection of social and political psychology (health, leadership, and ideology). We close by discussing the broader contributions of the present validity tests to our understanding of issues vital to natural language processing.
    en_US
  • Publication status
    publishedVersion
  • Review status
    peerReviewed
  • Citation
    Conway, L. G., Conway, K. R., & Houck, S. C. (2020). Validating automated integrative complexity: Natural language processing and the Donald Trump Test. Journal of Social and Political Psychology, 8(2), 504-524. https://doi.org/10.5964/jspp.v8i2.1307
    en_US
  • ISSN
    2195-3325
  • Persistent Identifier
    https://hdl.handle.net/20.500.12034/5641
  • Persistent Identifier
    https://doi.org/10.23668/psycharchives.6245
  • Language of content
    eng
  • Publisher
    PsychOpen GOLD
  • Is version of
    https://doi.org/10.5964/jspp.v8i2.1307
  • Is related to
    https://doi.org/10.23668/psycharchives.3359
  • Keyword(s)
    Automated Integrative Complexity
    en_US
  • Keyword(s)
    integrative complexity
    en_US
  • Keyword(s)
    natural language processing
    en_US
  • Keyword(s)
    AutoIC
    en_US
  • Dewey Decimal Classification number(s)
    150
  • Title
    Validating automated integrative complexity: Natural language processing and the Donald Trump Test
    en_US
  • DRO type
    article
  • Issue
    2
  • Journal title
    Journal of Social and Political Psychology
  • Page numbers
    504–524
  • Volume
    8
  • Visible tag(s)
    Version of Record
    en_US