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Sharp Threshold Detection Based on Sup-Norm Error Rates in High-Dimensional Models
Authors:Laurent Callot  Mehmet Caner  Anders Bredahl Kock  Juan Andres Riquelme
Institution:1. Department of Econometrics and Operations Research, VU University Amsterdam, CREATES, and the Tinbergen Institute, Amsterdam, The Netherlands(lcallot@vu.nl);2. Department of Economics, Translational Data Analytics, Department of Statistics, 452 Arps Hall, Ohio State University, Columbus, OH 43210 (caner.12@osu.edu);3. Department of Economics and Business, Aarhus University, Aarhus, Denmark, and CREATES (akock@creates.au.dk);4. Department of Economics,, University of Talca, Chile(jariquel@ncsu.edu)
Abstract:We propose a new estimator, the thresholded scaled Lasso, in high-dimensional threshold regressions. First, we establish an upper bound on the ? estimation error of the scaled Lasso estimator of Lee, Seo, and Shin. This is a nontrivial task as the literature on high-dimensional models has focused almost exclusively on ?1 and ?2 estimation errors. We show that this sup-norm bound can be used to distinguish between zero and nonzero coefficients at a much finer scale than would have been possible using classical oracle inequalities. Thus, our sup-norm bound is tailored to consistent variable selection via thresholding. Our simulations show that thresholding the scaled Lasso yields substantial improvements in terms of variable selection. Finally, we use our estimator to shed further empirical light on the long-running debate on the relationship between the level of debt (public and private) and GDP growth. Supplementary materials for this article are available online.
Keywords:Debt effect on GDP growth  Oracle inequality  Sup-norm bound  Threshold model  Thresholded scaled Lasso
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