macroeconomic forecasting;
component-wise boosting;
large datasets;
variable selection;
model selection criteria;
REGRESSION;
SELECTION;
D O I:
10.1002/for.2293
中图分类号:
F [经济];
学科分类号:
02 ;
摘要:
The use of large datasets for macroeconomic forecasting has received a great deal of interest recently. Boosting is one possible method of using high-dimensional data for this purpose. It is a stage-wise additive modelling procedure, which, in a linear specification, becomes a variable selection device that iteratively adds the predictors with the largest contribution to the fit. Using data for the United States, the euro area and Germany, we assess the performance of boosting when forecasting a wide range of macroeconomic variables. Moreover, we analyse to what extent its forecasting accuracy depends on the method used for determining its key regularization parameter: the number of iterations. We find that boosting mostly outperforms the autoregressive benchmark, and that K-fold cross-validation works much better as stopping criterion than the commonly used information criteria. Copyright (c) 2014 John Wiley & Sons, Ltd.
机构:
EDC Paris Business Sch, OCRE Lab, Paris, France
Univ Tunis, High Inst Management, ISGT, LR13ESOI GEF2A, Tunis 1002, TunisiaEDC Paris Business Sch, OCRE Lab, Paris, France
Ftiti, Zied
Jawadi, Fredj
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机构:
Univ Evry, 2 Rue Facteur Cheval, F-91025 Evry, FranceEDC Paris Business Sch, OCRE Lab, Paris, France