This paper provides an empirical implementation of some recent work by the author and Werner Ploberger on the development of “Bayes models” for time series. The methods offer a new data-based approach to model selection, to hypothesis testing and to forecast evaluation in the analysis of time series. A particular advantage of the approach is that modelling issues such as lag order, parameter constancy, and the presence of deterministic and stochastic trends all come within the compass of the same statistical methodology, as do the evaluation of forecasts from competing models. The paper shows how to build parsimonious empirical “Bayes models” using the new approach and applies the methodology to some Australian macroeconomic data. “Bayes mod...