Explaining GPT-4’s Schema of Depression Using Machine Behavior Analysis
Use of large language models such as ChatGPT (GPT-4) 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 GPT-4’s schema of mental disorders, that is, how it internally associates and interprets symptoms. In this work, we leveraged contemporary measurement theory to decode how GPT-4 interrelates depressive symptoms to inform both clinical utility and theoretical understanding. We found GPT-4’s assessment of depression: (a) had high overall convergent validity (r = .71 with self-report on 955 samples, and r = .81 with experts judgments on 209 samples); (b) had moderately high internal consistency (symptom inter-correlates r = .23 to .78 ) that largely aligned with literature and self-report; except that GPT-4 (c) underemphasized suicidality’s — and overemphasized psychomotor’s — relationship with other symptoms, and (d) had symptom inference patterns that suggest nuanced hypotheses (e.g. sleep and fatigue are influenced by most other symptoms while feelings of worthlessness/guilt is mostly influenced by depressed mood).
- Published in:
arXiv - Type:
Article - Authors:
Ganesan, Adithya V.; Varadarajan, Vasudha; Lal, Yash Kumar; Eijsbroek, Veerle C.; Kjell, Katarina; Kjell, Oscar N. E.; Dhanasekaran, Tanuja; Stade, Elizabeth C.; Eichstaedt, Johannes C.; Boyd, Ryan L.; Schwartz, H. Andrew; Flek, Lucie - Year:
2024 - Source:
https://arxiv.org/abs/2411.13800
Citation information
Ganesan, Adithya V.; Varadarajan, Vasudha; Lal, Yash Kumar; Eijsbroek, Veerle C.; Kjell, Katarina; Kjell, Oscar N. E.; Dhanasekaran, Tanuja; Stade, Elizabeth C.; Eichstaedt, Johannes C.; Boyd, Ryan L.; Schwartz, H. Andrew; Flek, Lucie: Explaining GPT-4’s Schema of Depression Using Machine Behavior Analysis, arXiv, 2024, https://arxiv.org/abs/2411.13800, Ganesan.etal.2024a,
@Article{Ganesan.etal.2024a,
author={Ganesan, Adithya V.; Varadarajan, Vasudha; Lal, Yash Kumar; Eijsbroek, Veerle C.; Kjell, Katarina; Kjell, Oscar N. E.; Dhanasekaran, Tanuja; Stade, Elizabeth C.; Eichstaedt, Johannes C.; Boyd, Ryan L.; Schwartz, H. Andrew; Flek, Lucie},
title={Explaining GPT-4’s Schema of Depression Using Machine Behavior Analysis},
journal={arXiv},
url={https://arxiv.org/abs/2411.13800},
year={2024},
abstract={Use of large language models such as ChatGPT (GPT-4) 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 GPT-4's schema of mental disorders, that is, how it internally associates and interprets symptoms. In this work, we leveraged contemporary measurement theory to...}}