Publication | Open Access
Explicit Mean-Square Error Bounds for Monte-Carlo and Linear Stochastic Approximation
12
Citations
25
References
2020
Year
EngineeringStochastic OptimizationUncertainty QuantificationStochastic GameMonte Carlo MethodMarkovian DisturbancesLinear Stochastic ApproximationComputer ScienceProbability TheoryMarkov Chain Monte CarloStochastic ControlMonte Carlo SamplingSequential Monte CarloApproximation TheoryStatisticsMarkov ChainMarkov Decision Process
This paper concerns error bounds for recursive equations subject to Markovian disturbances. Motivating examples abound within the fields of Markov chain Monte Carlo (MCMC) and Reinforcement Learning (RL), and many of these algorithms can be interpreted as special cases of stochastic approximation (SA). It is argued that it is not possible in general to obtain a Hoeffding bound on the error sequence, even when the underlying Markov chain is reversible and geometrically ergodic, such as the M/M/1 queue. This is motivation for the focus on mean square error bounds for parameter estimates. It is shown that mean square error achieves the optimal rate of $O(1/n)$, subject to conditions on the step-size sequence. Moreover, the exact constants in the rate are obtained, which is of great value in algorithm design.
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