ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, and two further, independent datasets, X and Y, from the marginal distributions of X and Y, respectively. We wish to combine X, Y and Z, so as to construct an estimator of the joint density. This problem is readily solved in some parametric circumstances. For example, if the joint distribution were normal then we would combine data from X and Z to estimate the mean and variance of X; proceed analogously to estimate the mean and variance of Y; but use data from Z alone to estimate E(XY). However, the problem is more difficult in a nonparametric setting. There we suggest a copula-based solution, which has potential benefits even when the margin...
42 pages, 6 figures, 9 tablesIn this paper we study nonparametric estimators of copulas and copula d...
<div><p></p><p>Bivariate survival function can be expressed as the composition of marginal survival ...
Copula models are nowadays widely used in multivariate data analysis. Major areas of application inc...
ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, ...
We propose a probability-integral-transformation-based estimator of multivariate densities. Given a ...
Non-parametric density estimation methods are more flexible than parametric methods, due to the fact...
A copula density is the joint probability density function (PDF) of a random vector with uniform mar...
This paper is concerned with studying the dependence structure between two random variables Y1 and ...
Abstract: We propose a probability-integral-transformation-based estimator of mul-tivariate densitie...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
The purpose of this paper is twofold: Fisrt, we review briefly the methods often used for copula est...
The dependence between random variables may be measured by mutual information. However, the estimati...
AbstractThis paper deals with the problem of multivariate copula density estimation. Using wavelet m...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
42 pages, 6 figures, 9 tablesIn this paper we study nonparametric estimators of copulas and copula d...
<div><p></p><p>Bivariate survival function can be expressed as the composition of marginal survival ...
Copula models are nowadays widely used in multivariate data analysis. Major areas of application inc...
ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, ...
We propose a probability-integral-transformation-based estimator of multivariate densities. Given a ...
Non-parametric density estimation methods are more flexible than parametric methods, due to the fact...
A copula density is the joint probability density function (PDF) of a random vector with uniform mar...
This paper is concerned with studying the dependence structure between two random variables Y1 and ...
Abstract: We propose a probability-integral-transformation-based estimator of mul-tivariate densitie...
The estimation of density functions for positive multivariate data is discussed. The proposed approa...
We consider the problem of multivariate density estimation, using samples from the distribution of i...
The purpose of this paper is twofold: Fisrt, we review briefly the methods often used for copula est...
The dependence between random variables may be measured by mutual information. However, the estimati...
AbstractThis paper deals with the problem of multivariate copula density estimation. Using wavelet m...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
42 pages, 6 figures, 9 tablesIn this paper we study nonparametric estimators of copulas and copula d...
<div><p></p><p>Bivariate survival function can be expressed as the composition of marginal survival ...
Copula models are nowadays widely used in multivariate data analysis. Major areas of application inc...