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Generative Agent-Based Modeling: Unveiling Social System Dynamics through Coupling Mechanistic Models with Generative Artificial Intelligence

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arxiv 2309.11456 v1 pith:XIJP5OXH submitted 2023-09-20 cs.AI cs.LGcs.MAnlin.AOphysics.soc-ph

Generative Agent-Based Modeling: Unveiling Social System Dynamics through Coupling Mechanistic Models with Generative Artificial Intelligence

classification cs.AI cs.LGcs.MAnlin.AOphysics.soc-ph
keywords modelsgenerativehumanmodelsocialagent-basedartificialbuilding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We discuss the emerging new opportunity for building feedback-rich computational models of social systems using generative artificial intelligence. Referred to as Generative Agent-Based Models (GABMs), such individual-level models utilize large language models such as ChatGPT to represent human decision-making in social settings. We provide a GABM case in which human behavior can be incorporated in simulation models by coupling a mechanistic model of human interactions with a pre-trained large language model. This is achieved by introducing a simple GABM of social norm diffusion in an organization. For educational purposes, the model is intentionally kept simple. We examine a wide range of scenarios and the sensitivity of the results to several changes in the prompt. We hope the article and the model serve as a guide for building useful diffusion models that include realistic human reasoning and decision-making.

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