Large Language Models Detect Amplified Abstract Interpretation in Trait Anxiety

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Abstract

Research on the relation of interpretation biases to internalizing symptoms has primarily focused on emotional valence (i.e., negativity bias), leaving other aspects of cognitive processing underexplored. Guided by dual-coding theory (Kousta et al., 2011; Paivio, 1991), we examined how the balance between concrete, perceptual detail and abstract, conceptual elaboration shapes social interpretations in adults with varying levels of trait anxiety and depressive symptoms. A confirmatory sample of 158 U.S. participants wrote interpretations of 24 ambiguous social images (12 negative, 12 non-negative) presented with gradually decreasing blur (Stage 1=80% blur, Stage 2=20%, Stage 3=0%). Large Language Model (LLM; GPT-4.1) analyses were used to compute emotional valence and the proportion of abstract versus concrete language in each response. Trait anxiety symptoms emerged as the most robust correlates of language-based interpretation biases. As preregistered, higher trait anxiety symptoms correlated with more negative interpretations. This pattern was stronger for negative than non-negative scenarios, replicating previous negativity effects. Second, in exploratory analyses, individuals high in trait anxiety symptoms showed an amplified increase in abstract relative to concrete language across stages, indicating a greater shift toward conceptual representation as visual ambiguity in the social scene resolved. The result held even when accounting for non-LLM, lexicon-based relative abstractness scores. These results extend valence-based theories by suggesting that trait anxiety symptoms are associated with amplified abstraction during social interpretations. LLM-derived linguistic indices provide a nuanced, automated method for capturing dual-coding dynamics in natural language, offering new avenues for elucidating latent cognitive processing patterns in psychopathology.

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