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Discussion Paper

Bayesian Model Selection and Prediction with Empirical Applications

This paper builds on some recent work by the author and Werner Ploberger (1991, 1994) on the development of “Bayes models” for time series and on the authors’ model selection criterion “PIC.” The PIC criterion is used in this paper to determine the lag order, the trend degree, and the presence or absence of a unit root in an autoregression with deterministic trend. A new forecast encompassing test for Bayes models is developed which allows one Bayes model to be compared with another on the basis of their respective forecasting performance.