We consider the stochastic generalized Nash equilibrium problem (SGNEP) with expected-value cost functions. Inspired by Yi and Pavel (2019), we propose a distributed generalized Nash equilibrium seeking algorithm based on the preconditioned forward-backward operator splitting for SGNEPs, where, at each iteration, the expected value of the pseudogradient is approximated via a number of random samples. Our main contribution is to show almost sure convergence of the proposed algorithm if the pseudogradient mapping is restricted (monotone and) cocoercive.

A Distributed Forward-Backward Algorithm for Stochastic Generalized Nash Equilibrium Seeking

Franci B.;
2021-01-01

Abstract

We consider the stochastic generalized Nash equilibrium problem (SGNEP) with expected-value cost functions. Inspired by Yi and Pavel (2019), we propose a distributed generalized Nash equilibrium seeking algorithm based on the preconditioned forward-backward operator splitting for SGNEPs, where, at each iteration, the expected value of the pseudogradient is approximated via a number of random samples. Our main contribution is to show almost sure convergence of the proposed algorithm if the pseudogradient mapping is restricted (monotone and) cocoercive.
2021
66
11
5467
5473
Stochastic approximation; stochastic generalized Nash equilibrium problems (SGNEPs); variational inequalities
Franci B.; Grammatico S.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2028720
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