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arxiv: 1608.00039 · v3 · pith:I26APOUJnew · submitted 2016-07-29 · 💻 cs.GT · cs.DC

Distributed Learning for Stochastic Generalized Nash Equilibrium Problems

classification 💻 cs.GT cs.DC
keywords agentsequilibriumnashstochasticgeneralizedlearningpenaltyproblem
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This work examines a stochastic formulation of the generalized Nash equilibrium problem (GNEP) where agents are subject to randomness in the environment of unknown statistical distribution. We focus on fully-distributed online learning by agents and employ penalized individual cost functions to deal with coupled constraints. Three stochastic gradient strategies are developed with constant step-sizes. We allow the agents to use heterogeneous step-sizes and show that the penalty solution is able to approach the Nash equilibrium in a stable manner within $O(\mu_\text{max})$, for small step-size value $\mu_\text{max}$ and sufficiently large penalty parameters. The operation of the algorithm is illustrated by considering the network Cournot competition problem.

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