In this paper, we propose a theoretical analysis of the algorithm ISDE, introduced in previous work. From a dataset, ISDE learns a density written as a product of marginal density estimators over a partition of the features. We show that under some hypotheses, the Kullback-Leibler loss between the proper density and the output of ISDE is a bias term plus the sum of two terms which goes to zero as the number of samples goes to infinity. The rate of convergence indicates that ISDE tackles the curse of dimensionality by reducing the dimension from the one of the ambient space to the one of the biggest blocks in the partition. The constants reflect a combinatorial complexity reduction linked to the design of ISDE
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
AbstractFor the purpose of comparing different nonparametric density estimators, Wegman (J. Statist....
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
In this paper, we propose ISDE (Independence Structure Density Estimation), an algorithm designed to...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
We propose a probability-integral-transformation-based estimator of multivariate densities. Given a ...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A method is proposed for semiparametric estimation where parametric and nonparametric criteria are e...
The problem of nonparametric estimation of the joint probability density of a vector of continuous a...
AbstractWe construct a simple algorithm, based on Newton's method, which permits asymptotic minimiza...
In this paper we discuss consistency of the posterior distribution in cases where the Kullback-Leibl...
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
AbstractFor the purpose of comparing different nonparametric density estimators, Wegman (J. Statist....
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...
In this paper, we propose ISDE (Independence Structure Density Estimation), an algorithm designed to...
Penalized likelihood method is among the most effective tools for nonparametric multivariate functio...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
Tech ReportThe nonparametric density estimation method proposed in this paper is computationally fas...
We propose a new nonparametric estimator for the density function of multivariate bounded data. As f...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
We propose a probability-integral-transformation-based estimator of multivariate densities. Given a ...
A new method for bias reduction in nonparametric density estimation is proposed. The method is a sim...
A method is proposed for semiparametric estimation where parametric and nonparametric criteria are e...
The problem of nonparametric estimation of the joint probability density of a vector of continuous a...
AbstractWe construct a simple algorithm, based on Newton's method, which permits asymptotic minimiza...
In this paper we discuss consistency of the posterior distribution in cases where the Kullback-Leibl...
Probability density functions are estimated by the method of maximum likelihood in sequences of regu...
AbstractFor the purpose of comparing different nonparametric density estimators, Wegman (J. Statist....
International audienceAbstract In this paper we discuss consistency of the posterior distribution in...