Model Averaging in Markov-Switching Models: Predicting National Recessions with Regional Data

42 Pages Posted: 18 Nov 2015

See all articles by Pierre Guerin

Pierre Guerin

Government of Canada - Bank of Canada

Danilo Leiva-Leon

Central Bank of Chile

Multiple version iconThere are 2 versions of this paper

Date Written: June 1, 2015

Abstract

This paper introduces new weighting schemes for model averaging when one is interested in combining discrete forecasts from competing Markov-switching models. In particular, we extend two existing classes of combination schemes – Bayesian (static) model averaging and dynamic model averaging – so as to explicitly reflect the objective of forecasting a discrete outcome. Both simulation and empirical exercises show that our new combination schemes outperform competing combination schemes in terms of forecasting accuracy. In the empirical application, we estimate and forecast U.S. business cycle turning points with state-level employment data. We find that forecasts obtained with our best combination scheme provide timely updates of the U.S. business cycles.

JEL Classification: C53, E32, E37

Suggested Citation

Guerin, Pierre and Leiva-Leon, Danilo, Model Averaging in Markov-Switching Models: Predicting National Recessions with Regional Data (June 1, 2015). Available at SSRN: https://ssrn.com/abstract=2691700 or http://dx.doi.org/10.2139/ssrn.2691700

Pierre Guerin

Government of Canada - Bank of Canada ( email )

234 Wellington Street
Ontario, Ottawa K1A 0G9
Canada

Danilo Leiva-Leon (Contact Author)

Central Bank of Chile ( email )

Research Department
Huerfanos 1185
Santiago
Chile

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