Multi Agent Network
Multi-agent networks study systems of interconnected agents collaboratively solving tasks, aiming to optimize performance and robustness. Current research emphasizes developing efficient algorithms for distributed consensus, resource allocation, and learning, often employing techniques like alternating direction method of multipliers (ADMM), Bayesian optimization, and various reinforcement learning approaches tailored to decentralized architectures. These advancements are crucial for addressing challenges in areas such as autonomous driving, large-scale sensor networks, and distributed optimization problems, improving efficiency and scalability in complex systems.
Papers
Distributed Finite-Sum Constrained Optimization subject to Nonlinearity on the Node Dynamics
Mohammadreza Doostmohammadian, Maria Vrakopoulou, Alireza Aghasi, Themistoklis Charalambous
UNMAS: Multi-Agent Reinforcement Learning for Unshaped Cooperative Scenarios
Jiajun Chai, Weifan Li, Yuanheng Zhu, Dongbin Zhao, Zhe Ma, Kewu Sun, Jishiyu Ding