Regularized Iterative Stochastic Approximation Methods for Stochastic Variational Inequality Problems

Automatic Control, IEEE Transactions(2013)

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摘要
We consider a Cartesian stochastic variational inequality problem with a monotone map. Monotone stochastic variational inequalities arise naturally, for instance, as the equilibrium conditions of monotone stochastic Nash games over continuous strategy sets or multiuser stochastic optimization problems. We introduce two classes of stochastic approximation methods, each of which requires exactly one projection step at every iteration, and provide convergence analysis for each of them. Of these, the first is a stochastic iterative Tikhonov regularization method which necessitates the update of the regularization parameter after every iteration. The second method is a stochastic iterative proximal-point method, where the centering term is updated after every iteration. The Cartesian structure lends itself to constructing distributed multi-agent extensions and conditions are provided for recovering global convergence in limited coordination variants where agents are allowed to choose their steplength sequences, regularization and centering parameters independently, while meeting a suitable coordination requirement. We apply the proposed class of techniques and their limited coordination versions to a stochastic networked rate allocation problem.
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关键词
approximation theory,convergence of numerical methods,game theory,iterative methods,stochastic programming,variational techniques,Cartesian stochastic variational inequality problem,centering term,continuous strategy sets,convergence analysis,equilibrium conditions,global convergence recovery,limited coordination variants,monotone map,monotone stochastic Nash games,monotone stochastic variational inequalities,multiuser stochastic optimization problems,projection step,regularization parameter,regularized iterative stochastic approximation methods,steplength sequences,stochastic iterative Tikhonov regularization method,stochastic iterative proximal-point method,stochastic networked rate allocation problem,Distributed algorithms,Tikhonov regularization,proximal-point methods,stochastic approximation,stochastic optimization,variational inequality
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