Multi Agent Scenario

Multi-agent scenarios investigate the interactions and decision-making processes of multiple autonomous agents within a shared environment, aiming to understand emergent behavior and optimize collective performance. Current research focuses on developing robust and efficient algorithms, including model-based and model-free reinforcement learning approaches, often incorporating techniques like game theory and attention mechanisms to handle complex interactions and uncertainties. This field is crucial for advancing artificial intelligence in diverse applications, such as robotics, autonomous driving, and cybersecurity, by enabling the creation of more sophisticated and adaptable systems capable of effective collaboration and competition.

Papers