JSAI2025

Presentation information

Organized Session

Organized Session » OS-34

[1L3-OS-34] OS-34

Tue. May 27, 2025 1:40 PM - 3:20 PM Room L (Room 1007)

オーガナイザ:林 祐輔(AIアライメントネットワーク),坂本 航太郎(東京大学),和地 瞭良(LINEヤフー),阿部 拳之(サイバーエージェント),森村 哲郎(サイバーエージェント)

3:00 PM - 3:20 PM

[1L3-OS-34-05] Modeling Interaction Between Large Language Models and Humans in Co-Creative Decision-Making as Distributed Bayesian Inference

〇Momoha Hirose1, Tadahiro Taniguchi1,2 (1. Kyoto University, 2. Ritsumeikan University)

Keywords:Symbol Emergence, Decision-Making, Collective Predictive Coding, Large Language Models

Large Language Models (LLMs) are playing an increasingly influential role in human decision-making. While previous research has primarily considered LLMs as tools that assist human decision-making, less attention has been given to their role in shaping a co-creative decision-making process, in which humans and LLMs iteratively update their distributions through interactions. This study presents a theory and model of LLM-human interaction in co-creative decision-making, formulated within the framework of distributed Bayesian inference, where the iterative process can be interpreted as a sampling-importance-resampling (SIR) algorithm. To examine the validity of the model, we conduct two experiments: (1) a cooperative card-guessing task, analyzing how variations in agent interaction dynamics affect decision convergence, and (2) an iterative brainstorming task, exploring its applicability to broader decision-making contexts. This study aims to establish a theoretical foundation for adaptive and democratic LLM-human decision-making.

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