Forecasting Substantial Data Revisions in the Presence of Model Uncertainty
A recent revision to the preliminary measurement of GDP(E) growth for 2003Q2 caused considerable press attention, provoked a public enquiry and prompted a number of reforms to UK statistical reporting procedures. In this paper, we compute the probability of "substantial revisions" that are greater (in absolute value) than the controversial 2003 revision. The pre-dictive densities are derived from Bayesian model averaging over a wide set of forecasting models including linear, structural break and regime-switching models with and without heteroskedasticity. Ignoring the nonlinearities and model uncertainty yields misleading predictives and obscures the improvement in the quality of preliminary UK macroeconomic measurements relative to the early 1990s.
E01 - Measurement and Data on National Income and Product Accounts and Wealth ; C11 - Bayesian Analysis ; C32 - Time-Series Models ; C53 - Forecasting and Other Model Applications