Estimating Macroeconomic Models: A Likelihood Approach
55 Pages Posted: 27 Apr 2006 Last revised: 19 May 2024
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Estimating Macroeconomic Models: A Likelihood Approach
Estimating Macroeconomic Models: A Likelihood Approach
Date Written: February 2006
Abstract
This paper shows how particle filtering allows us to undertake likelihood-based inference in dynamic macroeconomic models. The models can be nonlinear and/or non-normal. We describe how to use the output from the particle filter to estimate the structural parameters of the model, those characterizing preferences and technology, and to compare different economies. Both tasks can be implemented from either a classical or a Bayesian perspective. We illustrate the technique by estimating a business cycle model with investment-specific technological change, preference shocks, and stochastic volatility.
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