281
v1v2 (latest)

Convergence of Markovian Stochastic Approximation with discontinuous dynamics

SIAM Journal of Control and Optimization (SICON), 2014
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.

View on arXiv
Comments on this paper