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Developing and Validating a Facial Emotion Recognition Task With Graded Intensity

  • SUNY Buffalo

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

Facial emotion recognition (FER) tasks are often digitally altered to vary expression intensity; however, such tasks have unknown psychometric properties. In these studies, an FER task was developed and validated—the Graded Emotional Face Task (GEFT)—which provided an opportunity to examine the psychometric properties of such tasks. Facial expressions were altered to produce five intensity levels for six emotions (e.g., 40% anger). In Study 1, 224 undergraduates viewed subsets of these faces and labeled the expressions. An item selection algorithm was used to maximize internal consistency and balance gender and ethnicity. In Study 2, 219 undergraduates completed the final GEFT and a multimethod battery of validity measures. Finally, in Study 3, 407 undergraduates oversampled for borderline personality disorder (BPD) completed the GEFT and a self-report BPD measure. Broad FER scales (e.g., overall anger) demonstrated evidence of reliability and validity; however, more specific subscales (e.g., 40% anger) had more variable psychometric properties. Notably, ceiling/floor effects appeared to decrease both internal consistency and limit external validity correlations. The findings are discussed from the perspective of measurement issues in the social cognition literature.

Original languageEnglish
Pages (from-to)761-781
Number of pages21
JournalAssessment
Volume30
Issue number3
DOIs
StatePublished - Apr 2023

Keywords

  • behavioral task
  • emotion recognition
  • reliability
  • social cognition
  • validity

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