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Adaptive hybrid Metropolis-Hastings samplers for DSGE models
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Adaptive hybrid Metropolis-Hastings samplers for DSGE models

Ingvar Strid, Paolo Giordani and Robert Kohn
724
SSE/EFI Working Paper Series in Economics and Finance, 724, Stockholm School of Economics (SSE)
2010

Abstract

Markov Chain Monte Carlo (MCMC) Adaptive Metropolis-Hastings Parallel algorithm DSGE model Copula C11 C63
Bayesian inference for DSGE models is typically carried out by single block random walk Metropolis, involving very high computing costs. This paper combines two features, adaptive independent Metropolis-Hastings and parallelisation, to achieve large computational gains in DSGE model estimation. The history of the draws is used to continuously improve a t-copula proposal distribution, and an adaptive random walk step is inserted at predetermined intervals to escape difficult points. In linear estimation applications to a medium scale (23 parameters) and a large scale (51 parameters) DSGE model, the computing time per independent draw is reduced by 85% and 65-75% respectively. In a stylised nonlinear estimation example (13 parameters) the reduction is 80%. The sampler is also better suited to parallelisation than random walk Metropolis or blocking strategies, so that the effective computational gains, i.e. the reduction in wall-clock time per independent equivalent draw, can potentially be much larger.
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