Does chat change LLM's mind? Impact of Conversation on Psychological States of LLMs
Choi, Junhyuk, Hong, Yeseon, Kim, Minju, Kim, Bugeun
–arXiv.org Artificial Intelligence
The recent growth of large language models (LLMs) has enabled more authentic, human-centered interactions through multi-agent systems. However, investigation into how conversations affect the psychological states of LLMs is limited, despite the impact of these states on the usability of LLM-based systems. In this study, we explored whether psychological states change during multi-agent interactions, focusing on the effects of conversation depth, topic, and speaker. We experimentally investigated the behavior of 10 LLMs in open-domain conversations. We employed 14 questionnaires and a topic-analysis method to examine the behavior of LLMs across four aspects: personality, interpersonal relationships, motivation, and emotion. The results revealed distinct psychological trends influenced by conversation depth and topic, with significant variations observed between different LLM families and parameter sizes.
arXiv.org Artificial Intelligence
Dec-1-2024
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