Equilibrium State

Equilibrium state research focuses on identifying stable states in dynamic systems, particularly within game theory and multi-agent systems. Current research emphasizes developing algorithms and models to find or approximate equilibria in complex scenarios, including those with incomplete information, heterogeneous agents, and evolving strategies, often employing techniques like reinforcement learning, gradient descent, and agent-based modeling. This work is significant for advancing our understanding of strategic interactions in diverse fields, from economics and AI to neuroscience and molecular conformation prediction, leading to improved algorithms and a deeper understanding of complex system behavior.

Papers