Estimating DSGE Models: Recent Advances and Future Challenges

37 Pages Posted: 18 Aug 2020

See all articles by Jesús Fernández-Villaverde

Jesús Fernández-Villaverde

University of Pennsylvania - Department of Economics; National Bureau of Economic Research (NBER)

Pablo Guerrón-Quintana

Boston College - Department of Economics

Multiple version iconThere are 3 versions of this paper

Date Written: August 2020

Abstract

We review the current state of the estimation of DSGE models. After introducing a general framework for dealing with DSGE models, the state-space representation, we discuss how to evaluate moments or the likelihood function implied by such a structure. We discuss, in varying degrees of detail, recent advances in the field, such as the tempered particle filter, approximated Bayesian computation, the Hamiltonian Monte Carlo, variational inference, and machine learning, methods that show much promise, but that have not been fully explored yet by the DSGE community. We conclude by outlining three future challenges for this line of research.

Keywords: Bayesian methods, DSGE models, estimation, MCMC, Variational Inference

JEL Classification: C11, C13, E30

Suggested Citation

Fernández-Villaverde, Jesús and Guerrón-Quintana, Pablo, Estimating DSGE Models: Recent Advances and Future Challenges (August 2020). CEPR Discussion Paper No. DP15164, Available at SSRN: https://ssrn.com/abstract=3674953

Jesús Fernández-Villaverde (Contact Author)

University of Pennsylvania - Department of Economics ( email )

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Pablo Guerrón-Quintana

Boston College - Department of Economics ( email )

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