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This content will become publicly available on March 31, 2026

Title: Affective abstraction predicts variation in alexithymia, depression, and autism spectrum quotient.
Affective abstraction refers to how people conceptualize affective states in terms of category-level re- presentations that generalize across speci!c situations (e.g., “fear” as evoked by heights, predators, and haunted houses). Here, we develop a novel task for assessing affective abstraction and test its relations with trait alexithymia, depression, and autism spectrum quotient. In a preregistered online study, participants completed a set of tasks in which they matched a cue image with one of two probe images based on similarity of affective experience. In a discrete emotion version of the task, the cue and target probe matched on a discrete emotion category while controlling for valence. In a valence version of the task, the cue and target probe matched on valence (i.e., pleasantness or unpleasantness). We further varied the degree of abstraction such that some judgments crossed semantic categories (e.g., a house cue with animal probes). Accuracy, as indexed by the proportion of choices that accorded with norms, predicted trait measures of alexithymia, depression, and autism quotient with medium effect sizes. We conducted an integrative data analysis by including data from three other (nonpreregistered) samples (N = 435) and found substantial moderation by sampling population (Amazon Mechanical Turk, college students) and partial moderation by gender identity. Additional constraints on generalization include that our sample included predominantly White American adults between the ages of 23 and 64. These results provide preliminary support for the notion that affective abstraction may re"ect a transdiagnostic psychological process of broad relevance to individual differences in affective processing.  more » « less
Award ID(s):
2241938
PAR ID:
10621628
Author(s) / Creator(s):
; ; ; ; ;
Publisher / Repository:
American Psychological Association
Date Published:
Journal Name:
Emotion
ISSN:
1528-3542
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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