• Media type: Report; E-Book
  • Title: Variable Selection and Forecasting in High Dimensional Linear Regressions with Structural Breaks
  • Contributor: Chudik, Alexander [Author]; Pesaran, M. Hashem [Author]; Sharifvaghefi, Mahrad [Author]
  • Published: Munich: Center for Economic Studies and Ifo Institute (CESifo), 2020
  • Language: English
  • Keywords: structural breaks ; C52 ; variable selection ; high-dimensionality ; forecasting ; time-varying parameters ; C55 ; one covariate at a time multiple testing (OCMT) ; C22 ; multiple testing ; C53
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  • Description: This paper is concerned with problem of variable selection and forecasting in the presence of parameter instability. There are a number of approaches proposed for forecasting in the presence of breaks, including the use of rolling windows or exponential down-weighting. However, these studies start with a given model specification and do not consider the problem of variable selection. It is clear that, in the absence of breaks, researchers should weigh the observations equally at both variable selection and forecasting stages. In this study, we investigate whether or not we should use weighted observations at the variable selection stage in the presence of structural breaks, particularly when the number of potential covariates is large. Amongst the extant variable selection approaches we focus on the recently developed One Covariate at a time Multiple Testing (OCMT) method that allows a natural distinction between the selection and forecasting stages, and provide theoretical justification for using the full (not down-weighted) sample in the selection stage of OCMT and down-weighting of observations only at the forecasting stage (if needed). The benefits of the proposed method are illustrated by empirical applications to forecasting output growths and stock market returns.
  • Access State: Open Access