Analytic and Bootstrap-after-Cross-Validation Methods for Selecting Penalty Parameters of High-Dimensional M-Estimators

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Abstract

We develop two new methods for selecting the penalty parameter for the $\ell^1$-penalized high-dimensional M-estimator, which we refer to as the analytic and bootstrap-after-cross-validation methods. For both methods, we derive nonasymptotic error bounds for the corresponding $\ell^1$-penalized M-estimator and show that the bounds converge to zero under mild conditions, thus providing a theoretical justification for these methods. We demonstrate via simulations that the finite-sample performance of our methods is much better than that of previously available and theoretically justified methods.
OriginalsprogEngelsk
Antal sider63
StatusUdgivet - 10 apr. 2021
NavnUniversity of Copenhagen. Institute of Economics. Discussion Papers (Online)
Nummer04
Vol/bind21
ISSN1601-2461

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