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Hauptverfasser: Mehta, Ashish, Moore, Jared, Anthis, Jacy Reese, Agnew, William, Lin, Eric, Yin, Peggy, Ong, Desmond C., Haber, Nick, Dweck, Carol
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2604.25096
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author Mehta, Ashish
Moore, Jared
Anthis, Jacy Reese
Agnew, William
Lin, Eric
Yin, Peggy
Ong, Desmond C.
Haber, Nick
Dweck, Carol
author_facet Mehta, Ashish
Moore, Jared
Anthis, Jacy Reese
Agnew, William
Lin, Eric
Yin, Peggy
Ong, Desmond C.
Haber, Nick
Dweck, Carol
contents There is growing concern that AI chatbots might fuel delusional beliefs in users. Some have suggested that humans and chatbots mutually reinforce false beliefs over time, but quantitative evidence is lacking. Using a unique dataset of chat logs from individuals who exhibited delusional thinking, we developed a latent state model that captures accumulating and decaying influences between humans and chatbots. We find that a bidirectional influence model substantially outperforms a unidirectional alternative where humans are the primary driver of delusion. We find that humans exert strong but short-lived influence on chatbots, whereas chatbots exert longer-lasting influence on humans. Moreover, chatbots exert strong, stable self-influence over their own future outputs that tends to perpetuate delusions over long stretches of conversation. In fact, this chatbot self-influence constituted the dominant pathway when considering accumulated influence over time. Overall, these results indicate that humans tend to drive sharp, immediate increases in delusion, whereas chatbots sustain and propagate these effects over longer timescales. Together, these findings provide the first quantitative evidence that human-chatbot interactions can form feedback loops of delusion, decomposable into distinct pathways with dissociable temporal dynamics. By doing so, they can inform the development of safer AI systems.
format Preprint
id arxiv_https___arxiv_org_abs_2604_25096
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Dynamics of Delusion: Modeling Bidirectional False Belief Amplification in Human-Chatbot Dialogue
Mehta, Ashish
Moore, Jared
Anthis, Jacy Reese
Agnew, William
Lin, Eric
Yin, Peggy
Ong, Desmond C.
Haber, Nick
Dweck, Carol
Computation and Language
Human-Computer Interaction
There is growing concern that AI chatbots might fuel delusional beliefs in users. Some have suggested that humans and chatbots mutually reinforce false beliefs over time, but quantitative evidence is lacking. Using a unique dataset of chat logs from individuals who exhibited delusional thinking, we developed a latent state model that captures accumulating and decaying influences between humans and chatbots. We find that a bidirectional influence model substantially outperforms a unidirectional alternative where humans are the primary driver of delusion. We find that humans exert strong but short-lived influence on chatbots, whereas chatbots exert longer-lasting influence on humans. Moreover, chatbots exert strong, stable self-influence over their own future outputs that tends to perpetuate delusions over long stretches of conversation. In fact, this chatbot self-influence constituted the dominant pathway when considering accumulated influence over time. Overall, these results indicate that humans tend to drive sharp, immediate increases in delusion, whereas chatbots sustain and propagate these effects over longer timescales. Together, these findings provide the first quantitative evidence that human-chatbot interactions can form feedback loops of delusion, decomposable into distinct pathways with dissociable temporal dynamics. By doing so, they can inform the development of safer AI systems.
title The Dynamics of Delusion: Modeling Bidirectional False Belief Amplification in Human-Chatbot Dialogue
topic Computation and Language
Human-Computer Interaction
url https://arxiv.org/abs/2604.25096