Forecasting With Dynamic Panel Data Models
This paper considers the problem of forecasting a collection of short time series using cross‐sectional information in panel data. We construct point predictors using Tweedie's formula for the posterior mean of heterogeneous coefficients under a correlated random effects distribution. This formula utilizes cross‐sectional information to transform the unit‐specific (quasi) maximum likelihood estimator into an approximation of the posterior mean under a prior distribution that equals the population distribution of the random coefficients. We show that the risk of a predictor based on a nonparametric kernel estimate of the Tweedie correction is asymptotically equivalent to the risk of a predictor that treats the correlated random effects distribution as known (ratio optimality). Our empirical Bayes predictor performs well compared to various competitors in a Monte Carlo study. In an empirical application, we use the predictor to forecast revenues for a large panel of bank holding companies and compare forecasts that condition on actual and severely adverse macroeconomic conditions.
Year of publication: |
2020
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Authors: | Liu, Laura ; Moon, Hyungsik Roger ; Schorfheide, Frank |
Published in: |
Econometrica. - The Econometric Society, ISSN 0012-9682, ZDB-ID 1477253-X. - Vol. 88.2020, 1, p. 171-201
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Publisher: |
The Econometric Society |
Saved in:
Saved in favorites
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