Multi Agent
Multi-agent systems research focuses on designing and analyzing systems composed of multiple interacting agents, aiming to achieve complex goals through collaboration or competition. Current research emphasizes leveraging large language models (LLMs) to enhance agent capabilities, particularly in reasoning, planning, and communication, often employing architectures like multi-agent reinforcement learning (MARL) and novel communication pipelines to improve efficiency and robustness. This field is significant for advancing AI capabilities in diverse applications, including robotics, autonomous driving, and scientific discovery, by enabling more sophisticated and adaptable intelligent systems.
Papers
Scenario-Based Curriculum Generation for Multi-Agent Autonomous Driving
Axel Brunnbauer, Luigi Berducci, Peter Priller, Dejan Nickovic, Radu Grosu
Sharing the Cost of Success: A Game for Evaluating and Learning Collaborative Multi-Agent Instruction Giving and Following Policies
Philipp Sadler, Sherzod Hakimov, David Schlangen
Multi-Agent Optimization for Safety Analysis of Cyber-Physical Systems: Position Paper
Önder Gürcan, Nataliya Yakymets, Sara Tucci-Piergiovanni, Ansgar Radermacher
Policy Optimization finds Nash Equilibrium in Regularized General-Sum LQ Games
Muhammad Aneeq uz Zaman, Shubham Aggarwal, Melih Bastopcu, Tamer Başar
How Far Are We on the Decision-Making of LLMs? Evaluating LLMs' Gaming Ability in Multi-Agent Environments
Jen-tse Huang, Eric John Li, Man Ho Lam, Tian Liang, Wenxuan Wang, Youliang Yuan, Wenxiang Jiao, Xing Wang, Zhaopeng Tu, Michael R. Lyu
Can LLM-Augmented autonomous agents cooperate?, An evaluation of their cooperative capabilities through Melting Pot
Manuel Mosquera, Juan Sebastian Pinzon, Manuel Rios, Yesid Fonseca, Luis Felipe Giraldo, Nicanor Quijano, Ruben Manrique