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Non-linear DSGE models and the optimized central difference particle filter
Authors:Martin M. Andreasen
Affiliation:a Bank of England, Threadneedle Street, London EC2R 8AH, United Kingdom
b CREATES, School of Economics and Management, Aarhus University, Building 1322, Bartholins Allé 10, 8000 Aarhus C, Denmark
Abstract:We improve the accuracy and speed of particle filtering for non-linear DSGE models with potentially non-normal shocks. This is done by introducing a new proposal distribution which (i) incorporates information from new observables and (ii) has a small optimization step that minimizes the distance to the optimal proposal distribution. A particle filter with this proposal distribution is shown to deliver a high level of accuracy even with relatively few particles, and it is therefore much more efficient than the standard particle filter.
Keywords:Likelihood inference   Non-linear DSGE models   Non-normal shocks   Particle filtering
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