Forecasting with second-order approximations and Markov-switching DSGE models
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Date
Authors
Ivashchenko, Sergey
Cekin, Semih Emre
Kotze, Kevin
Gupta, Rangan
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
This paper considers the out-of-sample forecasting performance of first- and second-order perturbation approximations for DSGE models that incorporate Markov-switching behaviour in the policy reaction function and the volatility of shocks. The results suggest that second-order approximations provide an improved forecasting performance in models that do not allow for regime-switching, while for the MS-DSGE models, a first-order approximation would appear to provide better out-of-sample properties. In addition, we find that over short-horizons, the MS-DSGE models provide superior forecasting results when compared to those models that do not allow for regime-switching (at both perturbation orders).
Description
Keywords
Regime-switching, Second-order approximation, Non-linear MS-DSGE estimation, Forecasting, Dynamic stochastic general equilibrium (DSGE)
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Citation
Ivashchenko, S., Çekin, S.E., Kotzé, K. et al. Forecasting with Second-Order Approximations and Markov-Switching DSGE Models. Computational Economics 56, 747–771 (2020). https://doi.org/10.1007/s10614-019-09941-8.