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Environment Complexity and Nash Equilibria in a Sequential Social Dilemma (2408.02148v2)

Published 4 Aug 2024 in cs.GT, cs.AI, and cs.MA

Abstract: Multi-agent reinforcement learning (MARL) methods, while effective in zero-sum or positive-sum games, often yield suboptimal outcomes in general-sum games where cooperation is essential for achieving globally optimal outcomes. Matrix game social dilemmas, which abstract key aspects of general-sum interactions, such as cooperation, risk, and trust, fail to model the temporal and spatial dynamics characteristic of real-world scenarios. In response, our study extends matrix game social dilemmas into more complex, higher-dimensional MARL environments. We adapt a gridworld implementation of the Stag Hunt dilemma to more closely match the decision-space of a one-shot matrix game while also introducing variable environment complexity. Our findings indicate that as complexity increases, MARL agents trained in these environments converge to suboptimal strategies, consistent with the risk-dominant Nash equilibria strategies found in matrix games. Our work highlights the impact of environment complexity on achieving optimal outcomes in higher-dimensional game-theoretic MARL environments.

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Authors (4)
  1. Mustafa Yasir (2 papers)
  2. Andrew Howes (10 papers)
  3. Vasilios Mavroudis (38 papers)
  4. Chris Hicks (27 papers)

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