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Bibliographic Details
Main Authors: Onysk, Jakub, Huys, Quentin J. M.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.09487
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author Onysk, Jakub
Huys, Quentin J. M.
author_facet Onysk, Jakub
Huys, Quentin J. M.
contents Characterising how we verbalise our feelings is central to psychological assessment and intervention, yet the mapping between narrative and affective state remains poorly understood. Across two large studies (n=1257), we parameterised the structure and dynamics of depressive states by quantifying participants' internal narratives through large-language-model representations and their subspaces. In Study 1, we found verbal descriptions of symptom-specific thoughts captured granular information predictive of standardised, self-reported depression scores. Critically, we show preserving the specific covariance between symptoms is essential for construct validity, suggesting high-dimensional text representations mirror the latent geometry of the disorder. Study 2 probed the temporal dynamics of this relationship as participants engaged with emotional narratives. We found quantified changes in internal narratives led to changes in self-report, while the baseline narrative severity predicted the magnitude of subsequent affective change. By framing affect as a computational state, our results highlight its core, therapeutically pertinent functions: constraining the structure of internal narratives and integrating context to shape self-report.
format Preprint
id arxiv_https___arxiv_org_abs_2502_09487
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Internal narratives parameterise affective states
Onysk, Jakub
Huys, Quentin J. M.
Computation and Language
Artificial Intelligence
Machine Learning
Characterising how we verbalise our feelings is central to psychological assessment and intervention, yet the mapping between narrative and affective state remains poorly understood. Across two large studies (n=1257), we parameterised the structure and dynamics of depressive states by quantifying participants' internal narratives through large-language-model representations and their subspaces. In Study 1, we found verbal descriptions of symptom-specific thoughts captured granular information predictive of standardised, self-reported depression scores. Critically, we show preserving the specific covariance between symptoms is essential for construct validity, suggesting high-dimensional text representations mirror the latent geometry of the disorder. Study 2 probed the temporal dynamics of this relationship as participants engaged with emotional narratives. We found quantified changes in internal narratives led to changes in self-report, while the baseline narrative severity predicted the magnitude of subsequent affective change. By framing affect as a computational state, our results highlight its core, therapeutically pertinent functions: constraining the structure of internal narratives and integrating context to shape self-report.
title Internal narratives parameterise affective states
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2502.09487