Simulating Multi-Stakeholder Decision-Making with Generative Agents in Urban Planning
Jin Gao, Hanyong Xu, Luc Dao

TL;DR
This paper explores the use of large language model-based multi-agent systems to simulate stakeholder decision-making in urban planning, aiming to improve consensus-building, diversity, and fairness.
Contribution
It introduces a novel framework integrating demographic data into multi-agent simulations to evaluate and enhance urban planning decision processes.
Findings
Demographic data integration increases diversity of agent outputs
Communication among agents improves collective reasoning quality
Simulation predicts stakeholder reactions to urban proposals
Abstract
Reaching consensus in urban planning is a complex process often hindered by prolonged negotiations, trade-offs, power dynamics, and competing stakeholder interests, resulting in inefficiencies and inequities. Advances in large language models (LLMs), with their increasing capabilities in knowledge transfer, reasoning, and planning, have enabled the development of multi-generative agent systems, offering a promising approach to simulating discussions and interactions among diverse stakeholders on contentious topics. However, applying such systems also carries significant societal and ethical risks, including misrepresentation, privacy concerns, and biases stemming from opinion convergence among agents, hallucinations caused by insufficient or biased prompts, and the inherent limitations of foundation models. To evaluate the influence of these factors, we incorporate varying levels of…
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Taxonomy
Topics3D Modeling in Geospatial Applications · Modeling, Simulation, and Optimization · BIM and Construction Integration
