Language-Grounded Multi-Agent Planning for Personalized and Fair Participatory Urban Sensing
AI 摘要
MAPUS提出了一种基于LLM的多智能体框架,用于个性化和公平的城市感知,提升参与者满意度。
主要贡献
- 提出了基于LLM的多智能体框架MAPUS
- 设计了考虑个人偏好和城市异质性的参与式感知方法
- 实现了公平感知的选择和基于语言的协商路由优化
方法论
将参与者建模为智能体,利用LLM进行公平选择和路线优化,通过语言协商改善路线。
原文摘要
Participatory urban sensing leverages human mobility for large-scale urban data collection, yet existing methods typically rely on centralized optimization and assume homogeneous participants, resulting in rigid assignments that overlook personal preferences and heterogeneous urban contexts. We propose MAPUS, an LLM-based multi-agent framework for personalized and fair participatory urban sensing. In our framework, participants are modeled as autonomous agents with individual profiles and schedules, while a coordinator agent performs fairness-aware selection and refines sensing routes through language-based negotiation. Experiments on real-world datasets show that MAPUS achieves competitive sensing coverage while substantially improving participant satisfaction and fairness, promoting more human-centric and sustainable urban sensing systems.