Multi Agent System
Multi-agent systems (MAS) research focuses on designing and analyzing systems composed of multiple interacting agents, aiming to achieve collective goals exceeding individual capabilities. Current research emphasizes efficient communication strategies within MAS, particularly leveraging large language models (LLMs) and incorporating techniques like Retrieval-Augmented Generation (RAG) to improve decision-making and reduce computational costs. This field is significant for advancing AI capabilities in complex problem-solving, with applications ranging from robotics and urban planning to financial modeling and software development. The development of robust and scalable frameworks, along with methods for handling malicious agents and model uncertainty, are key areas of ongoing investigation.
Papers
LLM Multi-Agent Systems: Challenges and Open Problems
Shanshan Han, Qifan Zhang, Yuhang Yao, Weizhao Jin, Zhaozhuo Xu, Chaoyang He
Decentralized Event-Triggered Online Learning for Safe Consensus of Multi-Agent Systems with Gaussian Process Regression
Xiaobing Dai, Zewen Yang, Mengtian Xu, Fangzhou Liu, Georges Hattab, Sandra Hirche
Whom to Trust? Elective Learning for Distributed Gaussian Process Regression
Zewen Yang, Xiaobing Dai, Akshat Dubey, Sandra Hirche, Georges Hattab
Longitudinal Control Volumes: A Novel Centralized Estimation and Control Framework for Distributed Multi-Agent Sorting Systems
James Maier, Prasanna Sriganesh, Matthew Travers
A Survey on Context-Aware Multi-Agent Systems: Techniques, Challenges and Future Directions
Hung Du, Srikanth Thudumu, Rajesh Vasa, Kon Mouzakis
Natural Strategic Ability in Stochastic Multi-Agent Systems
Raphaël Berthon, Joost-Pieter Katoen, Munyque Mittelmann, Aniello Murano
PsySafe: A Comprehensive Framework for Psychological-based Attack, Defense, and Evaluation of Multi-agent System Safety
Zaibin Zhang, Yongting Zhang, Lijun Li, Hongzhi Gao, Lijun Wang, Huchuan Lu, Feng Zhao, Yu Qiao, Jing Shao