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Convergence of Markovian Stochastic Approximation with discontinuous dynamics

Abstract

This paper is devoted to the convergence analysis of stochastic approximation algorithms of the form θ_n+1=θ_n+γ_n+1H_θ_n(X_n+1)\theta\_{n+1} = \theta\_n + \gamma\_{n+1} H\_{\theta\_n}(X\_{n+1}) where {θ_nn,n0}\{\theta\_nn, n \geq 0\} is a RdR^d-valued sequence, {γ,n0}\{\gamma, n \geq 0\} is a deterministic step-size sequence and {X_n,n0}\{X\_n, n \geq 0\} is a controlled Markov chain. We study the convergence under weak assumptions on smoothness-in-θ\theta of the function θH_θ(x)\theta \mapsto H\_{\theta}(x). It is usually assumed that this function is continuous for any xx; in this work, we relax this condition. Our results are illustrated by considering stochastic approximation algorithms for (adaptive) quantile estimation and a penalized version of the vector quantization.

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