Open Access
February 2006 Large deviation asymptotics and control variates for simulating large functions
Sean P. Meyn
Ann. Appl. Probab. 16(1): 310-339 (February 2006). DOI: 10.1214/105051605000000737

Abstract

Consider the normalized partial sums of a real-valued function F of a Markov chain, $$\phi_{n}:=n^{-1}\sum_{k=0}^{n-1}F(\Phi(k)),\qquad n\ge1.$$ The chain {Φ(k):k≥0} takes values in a general state space $\mathsf {X}$, with transition kernel P, and it is assumed that the Lyapunov drift condition holds: $PV\le V-W+b\mathbb{I}_{C}$ where $V: \mathsf {X}\to(0,\infty)$, $W: \mathsf {X}\to[1,\infty)$, the set C is small and W dominates F. Under these assumptions, the following conclusions are obtained:

1. It is known that this drift condition is equivalent to the existence of a unique invariant distribution π satisfying π(W)<∞, and the law of large numbers holds for any function F dominated by W: $$ϕ_n→ϕ:=π(F),\qquad\mathrm{a.s.}, n→∞.$$

2. The lower error probability defined by $\mathsf {P}\{\phi_{n}\le c\}$, for c<ϕ, n≥1, satisfies a large deviation limit theorem when the function F satisfies a monotonicity condition. Under additional minor conditions an exact large deviations expansion is obtained.

3. If W is near-monotone, then control-variates are constructed based on the Lyapunov function V, providing a pair of estimators that together satisfy nontrivial large asymptotics for the lower and upper error probabilities.

In an application to simulation of queues it is shown that exact large deviation asymptotics are possible even when the estimator does not satisfy a central limit theorem.

Citation

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Sean P. Meyn. "Large deviation asymptotics and control variates for simulating large functions." Ann. Appl. Probab. 16 (1) 310 - 339, February 2006. https://doi.org/10.1214/105051605000000737

Information

Published: February 2006
First available in Project Euclid: 6 March 2006

zbMATH: 1094.60017
MathSciNet: MR2209344
Digital Object Identifier: 10.1214/105051605000000737

Subjects:
Primary: 37A30 , 60F10 , 60K35 , 65C05
Secondary: 00A72 , 60J22

Keywords: computational methods in Markov chains , ergodic theorems , general methods of simulation , large deviations , Markov operators , Monte Carlo methods , Spectral theory

Rights: Copyright © 2006 Institute of Mathematical Statistics

Vol.16 • No. 1 • February 2006
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