Selecting Penalty Parameters of High-Dimensional M-Estimators using Bootstrapping after Cross-Validation
Abstract
We develop a new method for selecting the penalty parameter for 1-penalized M-estimators in high dimensions, which we refer to as bootstrapping after cross-validation. We derive rates of convergence for the corresponding 1-penalized M-estimator and also for the post-1-penalized M-estimator, which refits the non-zero entries of the former estimator without penalty in the criterion function. We demonstrate via simulations that our methods are not dominated by cross-validation in terms of estimation errors and can outperform cross-validation in terms of inference. As an empirical illustration, we revisit Fryer Jr (2019), who investigated racial differences in police use of force, and confirm his findings.
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