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
Using Generative AI and Multi-Agents to Provide Automatic Feedback
Shuchen Guo, Ehsan Latif, Yifan Zhou, Xuan Huang, Xiaoming Zhai
A Multi-Agent Approach for REST API Testing with Semantic Graphs and LLM-Driven Inputs
Myeongsoo Kim, Tyler Stennett, Saurabh Sinha, Alessandro Orso
Designing Reliable Experiments with Generative Agent-Based Modeling: A Comprehensive Guide Using Concordia by Google DeepMind
Alejandro Leonardo García Navarro, Nataliia Koneva, Alfonso Sánchez-Macián, José Alberto Hernández, Manuel Goyanes
Learning from Demonstration with Hierarchical Policy Abstractions Toward High-Performance and Courteous Autonomous Racing
Chanyoung Chung, Hyunki Seong, David Hyunchul Shim
Multi-Agents are Social Groups: Investigating Social Influence of Multiple Agents in Human-Agent Interactions
Tianqi Song, Yugin Tan, Zicheng Zhu, Yibin Feng, Yi-Chieh Lee