Inoue, Atsushi; Kilian, Lutz How useful is bagging in forecasting economic time series? A case study of U.S. consumer price inflation. (English) Zbl 1469.62403 J. Am. Stat. Assoc. 103, No. 482, 511-522 (2008). Summary: This article focuses on the widely studied question of whether the inclusion of indicators of real economic activity lowers the prediction mean squared error of forecasting models of U.S. consumer price inflation. We propose three variants of the bagging algorithm specifically designed for this type of forecasting problem and evaluate their empirical performance. Although bagging predictors in our application are clearly more accurate than equally weighted forecasts, median forecasts, ARM forecasts, AFTER forecasts, or Bayesian forecast averages based on one extra predictor at a time, they are generally about as accurate as the Bayesian shrinkage predictor, the ridge regression predictor, the iterated LASSO predictor, or the Bayesian model average predictor based on random subsets of extra predictors. Our results show that bagging can achieve large reductions in prediction mean-squared errors even in such challenging applications as inflation forecasting; however, bagging is not the only method capable of achieving such gains. Cited in 16 Documents MSC: 62P20 Applications of statistics to economics 62M20 Inference from stochastic processes and prediction 91B84 Economic time series analysis Keywords:Bayesian model averaging; bootstrap aggregation; factor model; forecast combination; forecasting model selection; pre testing; shrinkage estimation PDFBibTeX XMLCite \textit{A. Inoue} and \textit{L. Kilian}, J. Am. Stat. Assoc. 103, No. 482, 511--522 (2008; Zbl 1469.62403) Full Text: DOI