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 $L^2$ risk across a wide range of H\"older-type functional classes. In the ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
International audienceWe study the estimation, in L p-norm, of density functions dened on [0, 1] d. ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
Density estimation and inference methods are widely used in empirical work. When the underlying dist...
This article introduces an intuitive and easy-to-implement nonparametric density estimator based on ...
In this paper, a little known computational approach to density estimation based on filtered polynom...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
AbstractLocal polynomial methods hold considerable promise for boundary estimation, where they offer...
Data-driven research is often hampered by privacy restrictions in the form of limited datasets or gr...
Dans cet article, nous considérons le problème de l’estimation de f, la densité conditionnelle de Y ...
Published at http://dx.doi.org/10.3150/14-BEJ633 in the Bernoulli (http://isi.cbs.nl/bernoulli/) by ...
Local polynomial fitting for univariate data has been widely studied and discussed, but up until now...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
We want to recover a signal based on noisy inhomogeneous data (the amount of data can vary strongly...
International audienceWe study the estimation, in L p-norm, of density functions dened on [0, 1] d. ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
International audienceWe study the estimation, in L p-norm, of density functions dened on [0, 1] d. ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
Density estimation and inference methods are widely used in empirical work. When the underlying dist...
This article introduces an intuitive and easy-to-implement nonparametric density estimator based on ...
In this paper, a little known computational approach to density estimation based on filtered polynom...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
AbstractLocal polynomial methods hold considerable promise for boundary estimation, where they offer...
Data-driven research is often hampered by privacy restrictions in the form of limited datasets or gr...
Dans cet article, nous considérons le problème de l’estimation de f, la densité conditionnelle de Y ...
Published at http://dx.doi.org/10.3150/14-BEJ633 in the Bernoulli (http://isi.cbs.nl/bernoulli/) by ...
Local polynomial fitting for univariate data has been widely studied and discussed, but up until now...
This paper studies the estimation of the conditional density f (x, ·) of Y i given X i = x, from the...
We want to recover a signal based on noisy inhomogeneous data (the amount of data can vary strongly...
International audienceWe study the estimation, in L p-norm, of density functions dened on [0, 1] d. ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...
International audienceWe study the estimation, in L p-norm, of density functions dened on [0, 1] d. ...
International audienceIn this article, we propose a new adaptive estimator for compact supported den...