Explaining GPTs' Schema of Depression: A Machine Behavior Analysis
Abstract
Use of large language models such as ChatGPT (GPT-4/GPT-5) for mental health support has grown rapidly, emerging as a promising route to assess and help people with mood disorders like depression. However, we have a limited understanding of these language models' schema of mental disorders, that is, how they internally associate and interpret symptoms of such disorders. In this work, we leveraged contemporary measurement theory to decode how GPT-4 and GPT-5 interrelate depressive symptoms, providing an explanation of how LLMs apply what they learn and informing clinical applications. We found that GPT-4 (a) had strong convergent validity with standard instruments and expert judgments , and (b) behaviorally linked depression symptoms with each other (symptom inter-correlates ) in accordance with established literature on depression; however, it (c) underemphasized the relationship between and other symptoms while overemphasizing ; and (d) suggested novel hypotheses of symptom mechanisms, for instance, indicating that and are broadly influenced by other depressive symptoms, while is only tied to . GPT-5 showed a slightly lower convergence with self-report, a difference our machine-behavior analysis makes interpretable through shifts in symptom-symptom relationships. These insights provide an empirical foundation for understanding language models' mental health assessments and demonstrate a generalizable approach for explainability in other models and disorders. Our findings can guide key stakeholders to make informed decisions for effectively situating these technologies in the care system.
Cite
@article{arxiv.2411.13800,
title = {Explaining GPTs' Schema of Depression: A Machine Behavior Analysis},
author = {Adithya V Ganesan and Vasudha Varadarajan and Yash Kumar Lal and Veerle C. Eijsbroek and Katarina Kjell and Oscar N. E. Kjell and Tanuja Dhanasekaran and Elizabeth C. Stade and Johannes C. Eichstaedt and Ryan L. Boyd and H. Andrew Schwartz and Lucie Flek},
journal= {arXiv preprint arXiv:2411.13800},
year = {2025}
}
Comments
25 pages, 1 table, 4 figures, 1 supplementary table, 5 supplementary figures, 59 references