Norges Bank

Working Paper

On Bayesian Filtering for Markov Regime Switching Models

Forfatter:
Nigar Hashimzade, Oleg Kirsanov, Tatiana Kirsanova and Junior Maih
Serie:
Working Paper
Nummer:
8/2024

Abstract

This paper presents a framework for empirical analysis of dynamic macroeconomic models using Bayesian filtering, with a specific focus on the state-space formulation of Dynamic Stochastic General Equilibrium (DSGE) models with multiple regimes. We outline the theoretical foundations of model estimation, provide the details of two families of powerful multiple-regime filters, IMM and GPB, and construct corresponding multiple-regime smoothers. A simulation exercise, based on a prototypical New Keynesian DSGE model, is used to demonstrate the computational robustness of the proposed filters and smoothers and evaluate their accuracy and speed for a selection of filters from each family. We show that the canonical IMM filter is faster and is no less, and often more, accurate than its competitors within IMM and GPB families, the latter including the commonly used Kim and Nelson (1999) filter. Using it with the matching smoother improves the precision in recovering unobserved variables by about 25%. Furthermore, applying it to the U.S. 1947-2023 macroeconomic time series, we successfully identify significant past policy shifts including those related to the post-Covid-19 period. Our results demonstrate the practical applicability and potential of the proposed routines in macroeconomic analysis.

Working Papers inneholder forskningsarbeider og utredninger som vanligvis ikke har fått sin endelige form. Også andre faglige analyser fra økonomer i Norges Bank utgis i serien. Synspunkter og konklusjoner i arbeidene står for forfatternes regning.

Norges Bank Working Papers distribueres også gjennom RepEc og BIS Central Bank Research Hub.

ISSN 1502-8190 (online)

Publisert 19. april 2024 12:00
Publisert 19. april 2024 12:00