Adaptive directional estimator of the density in R^d for independent and mixing sequences

05/22/2023
by   Sinda Ammous, et al.
0

A new multivariate density estimator for stationary sequences is obtained by Fourier inversion of the thresholded empirical characteristic function. This estimator does not depend on the choice of parameters related to the smoothness of the density; it is directly adaptive. We establish oracle inequalities valid for independent, α-mixing and τ-mixing sequences, which allows us to derive optimal convergence rates, up to a logarithmic loss. On general anisotropic Sobolev classes, the estimator adapts to the regularity of the unknown density but also achieves directional adaptivity. In particular, if A is an invertible matrix, if the observations are drawn from X ∈ R^d , d ≥ 1, it achieves the rate implied by the regularity of AX, which may be more regular than X. The estimator is easy to implement and numerically efficient. It depends on the calibration of a parameter for which we propose an innovative numerical selection procedure, using the Euler characteristic of the thresholded areas.

READ FULL TEXT
research
07/13/2016

Kernel Density Estimation for Dynamical Systems

We study the density estimation problem with observations generated by c...
research
02/14/2018

An adaptive procedure for Fourier estimators: illustration to deconvolution and decompounding

We introduce a new procedure to select the optimal cutoff parameter for ...
research
03/10/2023

Strong uniform convergence rates of the linear wavelet estimator of a multivariate copula density

In this paper, we investigate the almost sure convergence, in supremum n...
research
05/03/2013

Anisotropic oracle inequalities in noisy quantization

The effect of errors in variables in quantization is investigated. We pr...
research
02/14/2019

Rate-optimal nonparametric estimation for random coefficient regression models

Random coefficient regression models are a popular tool for analyzing un...
research
07/19/2019

Extent of occurrence reconstruction using a new data-driven support estimator

Given a random sample of points from some unknown distribution, we propo...
research
09/07/2018

Multiresolution analysis and adaptive estimation on a sphere using stereographic waveletsBogdan Ćmiel

We construct an adaptive estimator of a density function on d dimensiona...

Please sign up or login with your details

Forgot password? Click here to reset