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Metropolis-Hastings prefetching algorithms
Working paper   Open access

Metropolis-Hastings prefetching algorithms

Ingvar Strid
706
SSE/EFI Working Paper Series in Economics and Finance, 706, Stockholm School of Economics (SSE)
2008

Abstract

Prefetching Metropolis-Hastings Parallel Computing DSGE models Optimal acceptance rate C11 C13 C63
Prefetching is a simple and general method for single-chain parallelisation of the Metropolis-Hastings algorithm based on the idea of evaluating the posterior in parallel and ahead of time. In this paper improved Metropolis-Hastings prefetching algorithms are presented and evaluated. It is shown how to use available information to make better predictions of the future states of the chain and increase the efficiency of prefetching considerably. The optimal acceptance rate for the prefetching random walk Metropolis-Hastings algorithm is obtained for a special case and it is shown to decrease in the number of processors employed. The performance of the algorithms is illustrated using a well-known macroeconomic model. Bayesian estimation of DSGE models, linearly or nonlinearly approximated, is identified as a potential area of application for prefetching methods. The generality of the proposed method, however, suggests that it could be applied in many other contexts as well.
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