CLAIMar 17

Characterizing Delusional Spirals through Human-LLM Chat Logs

Stanford
arXiv:2603.1656792.013 citationsh-index: 13
AI Analysis

This addresses the problem of psychological harm from LLM chatbots for users and policymakers, offering the first in-depth analysis of verifiable harmful cases, though it is incremental in building on prior speculation about AI harms.

The study analyzed chat logs from 19 users who reported psychological harms from LLM chatbots, identifying patterns such as delusional thinking in 15.5% of user messages and chatbot misrepresentation as sentient in 21.2% of messages, with findings linking certain topics to longer conversations and providing recommendations for harm mitigation.

As large language models (LLMs) have proliferated, disturbing anecdotal reports of negative psychological effects, such as delusions, self-harm, and ``AI psychosis,'' have emerged in global media and legal discourse. However, it remains unclear how users and chatbots interact over the course of lengthy delusional ``spirals,'' limiting our ability to understand and mitigate the harm. In our work, we analyze logs of conversations with LLM chatbots from 19 users who report having experienced psychological harms from chatbot use. Many of our participants come from a support group for such chatbot users. We also include chat logs from participants covered by media outlets in widely-distributed stories about chatbot-reinforced delusions. In contrast to prior work that speculates on potential AI harms to mental health, to our knowledge we present the first in-depth study of such high-profile and veridically harmful cases. We develop an inventory of 28 codes and apply it to the $391,562$ messages in the logs. Codes include whether a user demonstrates delusional thinking (15.5% of user messages), a user expresses suicidal thoughts (69 validated user messages), or a chatbot misrepresents itself as sentient (21.2% of chatbot messages). We analyze the co-occurrence of message codes. We find, for example, that messages that declare romantic interest and messages where the chatbot describes itself as sentient occur much more often in longer conversations, suggesting that these topics could promote or result from user over-engagement and that safeguards in these areas may degrade in multi-turn settings. We conclude with concrete recommendations for how policymakers, LLM chatbot developers, and users can use our inventory and conversation analysis tool to understand and mitigate harm from LLM chatbots. Warning: This paper discusses self-harm, trauma, and violence.

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