cs.AI updates on arXiv.org 10月23日 12:11
AgentSense:基于多智能体的混合城市感知框架
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本文提出AgentSense,一种将大语言模型(LLMs)集成到参与式城市感知中的混合、无需训练的框架,通过多智能体进化系统优化城市感知任务分配,提高城市感知系统的适应性和可解释性。

arXiv:2510.19661v1 Announce Type: new Abstract: Web-based participatory urban sensing has emerged as a vital approach for modern urban management by leveraging mobile individuals as distributed sensors. However, existing urban sensing systems struggle with limited generalization across diverse urban scenarios and poor interpretability in decision-making. In this work, we introduce AgentSense, a hybrid, training-free framework that integrates large language models (LLMs) into participatory urban sensing through a multi-agent evolution system. AgentSense initially employs classical planner to generate baseline solutions and then iteratively refines them to adapt sensing task assignments to dynamic urban conditions and heterogeneous worker preferences, while producing natural language explanations that enhance transparency and trust. Extensive experiments across two large-scale mobility datasets and seven types of dynamic disturbances demonstrate that AgentSense offers distinct advantages in adaptivity and explainability over traditional methods. Furthermore, compared to single-agent LLM baselines, our approach outperforms in both performance and robustness, while delivering more reasonable and transparent explanations. These results position AgentSense as a significant advancement towards deploying adaptive and explainable urban sensing systems on the web.

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城市感知 大语言模型 多智能体系统 适应性 可解释性
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