Efficient Likelihood Evaluation of State-Space Representations
Author(s) -
David N. DeJong,
Roman Liesenfeld,
Guilherme V. Moura,
JeanFrançois Richard,
Hariharan Dharmarajan
Publication year - 2012
Publication title -
the review of economic studies
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 15.641
H-Index - 141
eISSN - 1467-937X
pISSN - 0034-6527
DOI - 10.1093/restud/rds040
Subject(s) - state space , gaussian , approximations of π , mathematics , mathematical optimization , importance sampling , space (punctuation) , state space representation , sampling (signal processing) , parameter space , state (computer science) , computer science , algorithm , statistics , monte carlo method , filter (signal processing) , physics , quantum mechanics , computer vision , operating system
We develop a numerical procedure that facilitates efficient likelihood evaluation in applications involving non-linear and non-Gaussian state-space models. The procedure employs continuous approximations of filtering densities, and delivers unconditionally optimal global approximations of targeted integrands to achieve likelihood approximation. Optimized approximations of targeted integrands are constructed via efficient importance sampling. Resulting likelihood approximations are continuous functions of model parameters, greatly enhancing parameter estimation. We illustrate our procedure in applications to dynamic stochastic general equilibrium models.
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