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Optimal Forecasts from Markov Switching Models
Authors:Tom Boot  Andreas Pick
Institution:1. University of Groningen, Department of Economics, Econometrics and Finance, 9747 AE Groningen, The Netherlands (t.boot@rug.nl);2. Econometric Institute, Erasmus University Rotterdam, 3000 DR Rotterdam, The Netherlands;3. Tinbergen Institute, 1082 MS Amsterdam, The Netherlands;4. De Nederlandsche Bank, 1017 ZN Amsterdam, The Netherlands (andreas.pick@cantab.net)
Abstract:We derive forecasts for Markov switching models that are optimal in the mean square forecast error (MSFE) sense by means of weighting observations. We provide analytic expressions of the weights conditional on the Markov states and conditional on state probabilities. This allows us to study the effect of uncertainty around states on forecasts. It emerges that, even in large samples, forecasting performance increases substantially when the construction of optimal weights takes uncertainty around states into account. Performance of the optimal weights is shown through simulations and an application to U.S. GNP, where using optimal weights leads to significant reductions in MSFE. Supplementary materials for this article are available online.
Keywords:Forecasting  GNP forecasting  Markov switching models  Optimal weights
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