Forecasting in Large Macroeconomic Panels Using Bayesian Model Averaging
Preprint
- 1 March 2003
- preprint
- Published by Elsevier in SSRN Electronic Journal
Abstract
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model averaging. Practical methods for implementing Bayesian model averaging with factor models are described. These methods involve algorithms that simulate from the space defined by all possible models. We explain how these simulation algorithms can also be used to select the model with the highest marginal likelihood (or highest value of an information criterion) in an efficient manner. We apply these methods to the problem of forecasting GDP and inflation using quarterly U.S. data on 162 time series. Our analysis indicates that models containing factors do outperform autoregressive models in forecasting both GDP and inflation, but only narrowly and at short horizons. We attribute these findings to the presence of structural instability and the fact that lags of the dependent variable seem to contain most of the information relevant for forecasting.Keywords
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This publication has 20 references indexed in Scilit:
- Measuring the Effects of Monetary Policy: A Factor-Augmented Vector Autoregressive (FAVAR) ApproachPublished by National Bureau of Economic Research ,2004
- Are More Data Always Better for Factor Analysis?Published by National Bureau of Economic Research ,2003
- Determining the Number of Factors in Approximate Factor ModelsEconometrica, 2002
- Model uncertainty in cross‐country growth regressionsJournal of Applied Econometrics, 2001
- Benchmark priors for Bayesian model averagingJournal of Econometrics, 2001
- Oxford University PressPublished by Oxford University Press (OUP) ,2001
- The Generalized Dynamic-Factor Model: Identification and EstimationThe Review of Economics and Statistics, 2000
- Prediction via Orthogonalized Model MixingJournal of the American Statistical Association, 1996
- The Intrinsic Bayes Factor for Model Selection and PredictionJournal of the American Statistical Association, 1996
- Assessment and Propagation of Model UncertaintyJournal of the Royal Statistical Society Series B: Statistical Methodology, 1995