Jan. 1, 2023, midnight | Zejian Liu, Meng Li

JMLR www.jmlr.org

We study the problem of estimating the derivatives of a regression function, which has a wide range of applications as a key nonparametric functional of unknown functions. Standard analysis may be tailored to specific derivative orders, and parameter tuning remains a daunting challenge particularly for high-order derivatives. In this article, we propose a simple plug-in kernel ridge regression (KRR) estimator in nonparametric regression with random design that is broadly applicable for multi-dimensional support and arbitrary mixed-partial derivatives. We provide a …

analysis applications challenge derivatives function functional functions kernel orders regression ridge standard study

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