Convergence Rate of Generalized Nash Equilibrium Learning in Strongly Monotone Games with Linear Constraints
Convergence Rate of Generalized Nash Equilibrium Learning in Strongly Monotone Games with Linear Constraints
We consider payoff-based learning of a generalized Nash equilibrium (GNE) in multi-agent systems. Our focus is on games with jointly convex constraints of a linear structure and strongly monotone pseudo-gradients. We present a convergent procedure based on a partial regularization technique and establish the convergence rate of its iterates under one- and two-point payoff-based feedback. To the best of our knowledge, this work is the first one characterizing the convergence speed of iterates to a variational GNE in the class of games under consideration.
Tatiana Tatarenko、Maryam Kamgarpour
数学
Tatiana Tatarenko,Maryam Kamgarpour.Convergence Rate of Generalized Nash Equilibrium Learning in Strongly Monotone Games with Linear Constraints[EB/OL].(2025-07-16)[2025-08-05].https://arxiv.org/abs/2507.12112.点此复制
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