Constant step stochastic approximations involving differential inclusions: stability, long-run convergence and applications

Pascal Bianchi, Walid Hachem, Adil Salim

Research output: Contribution to journalArticlepeer-review

Abstract

We consider a Markov chain (Xn) whose kernel is indexed by a scaling parameter γ > 0, referred to as the step size. The aim is to analyze the behaviour of the Markov chain in the doubly asymptotic regime where n→∞then γ → 0. First, under mild assumptions on the so-called drift of the Markov chain, we show that the interpolated process converges narrowly to the solutions of a Differential Inclusion (DI) involving an upper semicontinuous set-valued map with closed and convex values. Second, we provide verifiable conditions which ensure the stability of the iterates. Third, by putting the above results together, we establish the long run convergence of the iterates as γ > 0, to the Birkhoff center of the DI. The ergodic behaviour of the iterates is also provided. Application examples are investigated. We apply our findings to (1) the problem of nonconvex proximal stochastic optimization and (2) a fluid model of parallel queues.

Original languageEnglish
Pages (from-to)288-320
Number of pages33
JournalStochastics
Volume91
Issue number2
DOIs
Publication statusPublished - 17 Feb 2019
Externally publishedYes

Keywords

  • Differential inclusions
  • dynamical systems
  • non-convex optimization
  • queueing systems
  • stochastic approximation with constant step

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