The Typing Cure: Experiences with Large Language Model Chatbots for Mental Health Support
Zotero / D&S Group / Top-Level Items 2026-06-11
Item Type
Preprint
Author
Inhwa Song
Author
Sachin R. Pendse
Author
Neha Kumar
Author
Munmun De Choudhury
URL
http://arxiv.org/abs/2401.14362
Date
2025-05-09
Extra
arXiv:2401.14362 [cs]
DOI
10.48550/arXiv.2401.14362
Accessed
2025-06-17 14:02:51
Library Catalog
arXiv.org
Abstract
People experiencing severe distress increasingly use Large Language Model (LLM) chatbots as mental health support tools. Discussions on social media have described how engagements were lifesaving for some, but evidence suggests that general-purpose LLM chatbots also have notable risks that could endanger the welfare of users if not designed responsibly. In this study, we investigate the lived experiences of people who have used LLM chatbots for mental health support. We build on interviews with 21 individuals from globally diverse backgrounds to analyze how users create unique support roles for their chatbots, fill in gaps in everyday care, and navigate associated cultural limitations when seeking support from chatbots. We ground our analysis in psychotherapy literature around effective support, and introduce the concept of therapeutic alignment, or aligning AI with therapeutic values for mental health contexts. Our study offers recommendations for how designers can approach the ethical and effective use of LLM chatbots and other AI mental health support tools in mental health care.
Short Title
The Typing Cure
Repository
arXiv
Archive ID
arXiv:2401.14362