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SOE: Fachverband Physik sozio-ökonomischer Systeme
SOE 14: Focus Session: Dynamics of Socio-ecological Systems
SOE 14.5: Vortrag
Mittwoch, 20. März 2024, 12:30–12:50, MA 001
The complex dynamics of collective reinforcement learning — •Wolfram Barfuss — University of Bonn
Cooperation at scale is critical for achieving a sustainable future for humanity. However, achieving collective, cooperative behavior -- in which intelligent actors in complex environments jointly improve their well-being -- remains poorly understood. Complex systems science (CSS) provides a rich understanding of collective phenomena, the evolution of cooperation, and the institutions that can sustain both. Yet, much of the theory in this area fails to consider individual-level complexity and environmental context --- largely for the sake of tractability and because it has not been clear how to do so rigorously. These elements are, however, well-captured in multi-agent reinforcement learning (MARL), which has recently put focus on cooperative (artificial) intelligence. However, typical MARL simulations can be computationally expensive and challenging to interpret.
In this talk, I propose that bridging CSS and MARL affords new directions. By treating MARL as a dynamical system, we can study the complex dynamics of collective cooperation emerging from cognitive agency in a given environmental context.
Keywords: Reinforcement learning; Multi-agent system; Dynamical system; Social-ecological system; Cooperation