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In-Sample Inference and Forecasting in Misspecified Factor Models

Version 3 2017-02-13, 21:33
Version 2 2016-07-28, 11:33
Version 1 2016-05-11, 17:43
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posted on 2017-02-13, 21:33 authored by Marine Carrasco, Barbara Rossi

This article considers in-sample prediction and out-of-sample forecasting in regressions with many exogenous predictors. We consider four dimension-reduction devices: principal components, ridge, Landweber Fridman, and partial least squares. We derive rates of convergence for two representative models: an ill-posed model and an approximate factor model. The theory is developed for a large cross-section and a large time-series. As all these methods depend on a tuning parameter to be selected, we also propose data-driven selection methods based on cross-validation and establish their optimality. Monte Carlo simulations and an empirical application to forecasting inflation and output growth in the U.S. show that data-reduction methods outperform conventional methods in several relevant settings, and might effectively guard against instabilities in predictors’ forecasting ability.

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