A new adaptive local polynomial density estimation procedure on complicated domains

Bertin, K; Klutchnikoff N.; Ouimet, F

Keywords: minimax, oracle inequality, adaptive estimation, complicated domain, concave domain, local polynomial, nonparametric density estimation, pinched domain, pointwise risk, polynomial sector

Abstract

This paper presents a novel approach for pointwise estimation of multivariate density functions on known domains of arbitrary dimensions using nonparametric local polynomial estimators. Our method is highly flexible, as it applies to both simple domains, such as open connected sets, and more complicated domains that are not star-shaped around the point of estimation. This enables us to handle domains with sharp concavities, holes, and local pinches, such as polynomial sectors. Additionally, we introduce a data-driven selection rule based on the general ideas of Goldenshluger and Lepski. Our results demonstrate that the local polynomial estimators are minimax under a L2 risk across a wide range of H & ouml;lder-type functional classes. In the adaptive case, we provide oracle inequalities and explicitly determine the convergence rate of our statistical procedure. Simulations on polynomial sectors show that our oracle estimates outperform those of the most popular alternative method, found in the sparr package for the R software. Our statistical procedure is implemented in an online R package which is readily accessible.

Más información

Título según WOS: A new adaptive local polynomial density estimation procedure on complicated domains
Título de la Revista: BERNOULLI
Volumen: 31
Número: 3
Editorial: INT STATISTICAL INST
Fecha de publicación: 2025
Página de inicio: 2201
Página final: 2225
Idioma: English
DOI:

10.3150/24-BEJ1802

Notas: ISI