Higher-Order Uncoupled Learning Dynamics and Nash Equilibrium
Sarah A. Toonsi, Jeff S. Shamma

TL;DR
This paper explores higher-order uncoupled learning dynamics in finite games, establishing conditions for convergence to Nash equilibria and linking learning to control theory concepts.
Contribution
It introduces higher-order uncoupled dynamics, connects learning to feedback stabilization, and demonstrates limitations and conditions for equilibrium learnability.
Findings
Existence of higher-order dynamics leading to isolated completely mixed-strategy NE.
Link between uncoupled learning and feedback stabilization in control theory.
Impossibility results showing no universal dynamics for all games.
Abstract
We study learnability of mixed-strategy Nash Equilibrium (NE) in general finite games using higher-order replicator dynamics as well as classes of higher-order uncoupled heterogeneous dynamics. In higher-order uncoupled learning dynamics, players have no access to utilities of opponents (uncoupled) but are allowed to use auxiliary states to further process information (higher-order). We establish a link between uncoupled learning and feedback stabilization with decentralized control. Using this association, we show that for any finite game with an isolated completely mixed-strategy NE, there exist higher-order uncoupled learning dynamics that lead (locally) to that NE. We further establish the lack of universality of learning dynamics by linking learning to the control theoretic concept of simultaneous stabilization. We construct two games such that any higher-order dynamics that learn…
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