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Friend or Foe: A Review and Synthesis of Computational Models of the Identity Labeling Problem

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  • Kenneth Joseph
  • Jonathan Howard Morgan

Abstract

We introduce the identity labeling problem – given an individual in a social situation, can we predict what identity(ies) they will be labeled with by someone else? This problem remains a theoretical gap and methodological challenge, evidenced by the fact that models of social-cognition often sidestep the issue by treating identities as already known. We build on insights from existing models to develop a new framework, entitled Latent Cognitive Social Spaces, that can incorporate multiple social cues including sentiment information, socio-demographic characteristics, and institutional associations to estimate the most culturally expected identity. We apply our model to data collected in two vignette experiments, finding that it predicts identity labeling choices of participants with a mean absolute error of 10.9%, a 100% improvement over previous models based on parallel constraint satisfaction and affect control theory.

Suggested Citation

  • Kenneth Joseph & Jonathan Howard Morgan, 2022. "Friend or Foe: A Review and Synthesis of Computational Models of the Identity Labeling Problem," The Journal of Mathematical Sociology, Taylor & Francis Journals, vol. 46(3), pages 266-300, July.
  • Handle: RePEc:taf:gmasxx:v:46:y:2022:i:3:p:266-300
    DOI: 10.1080/0022250X.2021.1923016
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