Department of Economics Forecasting in Large Macroeconomic Panels Using Bayesian Model Averaging
نویسندگان
چکیده
This paper considers the problem of forecasting in large macroeconomic panels using Bayesian model averaging. Theoretical justi...cations for averaging across models, as opposed to selecting a single model, are given. Practical methods for implementing Bayesian model averaging with factor models are described. These methods involve algorithms which simulate from the space de...ned by all possible models. We discuss 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 e¢cient manner. We apply these methods to the problem of forecasting GDP and in‡ation using quarterly U.S. data on 162 time series. For both GDP and in‡ation, we ...nd that the models which contain factors do out-forecast an AR(p), but only by a relatively small amount and only at short horizons. We attribute these ...ndings to the presence of structural instability and the fact that lags of dependent variable seem to contain most of the information relevant for forecasting. Relative to the small forecasting gains provided by including factors, the gains provided by using Bayesian model averaging over forecasting methods based on a single model are appreciable.
منابع مشابه
Forecasting in Large Macroeconomic Panels Using Bayesian Model Averaging
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 ma...
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