A copula density estimation method that is based on a finite mixture of heterogeneous parametric copula densities is proposed here. More specifically, the mixture components are Clayton, Frank, Gumbel, T, and normal copula densities, which are capable of capturing lower tail, strong central, upper tail, heavy tail, and symmetrical elliptical dependence, respectively. The model parameters are estimated by an interior-point algorithm for the constrained maximum likelihood problem. The interior-point algorithm is compared with the commonly used EM algorithm. Simulation and real data application show that the proposed approach is effective to model complex dependencies for data in dimensions beyond two or three
Today, we will go further on the inference of copula functions. Some codes (and references) can be f...
An important paradigmfor solving continuous optimization problems has been the use of the multivaria...
The objective of this paper is to estimate a bivariate density nonparametrically from a dataset from...
A copula density is the joint probability density function (PDF) of a random vector with uniform mar...
Recently a new way of modeling dependence has been introduced considering a sequence of parametric c...
42 pages, 6 figures, 9 tablesIn this paper we study nonparametric estimators of copulas and copula d...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
This paper presents a novel algorithm for performing inference and/or clustering in semiparametric c...
Copula modeling has become ubiquitous in modern statistics. Here, the problem of nonparametrically e...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
Copulas, generalized estimating equations, and generalized linear mixed models promote the analysis ...
Non-parametric density estimation methods are more flexible than parametric methods, due to the fact...
The composite likelihood (CL) is amongst the computational methods used for the estimation of high-d...
Today, we will go further on the inference of copula functions. Some codes (and references) can be f...
An important paradigmfor solving continuous optimization problems has been the use of the multivaria...
The objective of this paper is to estimate a bivariate density nonparametrically from a dataset from...
A copula density is the joint probability density function (PDF) of a random vector with uniform mar...
Recently a new way of modeling dependence has been introduced considering a sequence of parametric c...
42 pages, 6 figures, 9 tablesIn this paper we study nonparametric estimators of copulas and copula d...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
This paper presents a novel algorithm for performing inference and/or clustering in semiparametric c...
Copula modeling has become ubiquitous in modern statistics. Here, the problem of nonparametrically e...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The majority of model-based clustering techniques is based on multivariate Normal models and their v...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
Copulas, generalized estimating equations, and generalized linear mixed models promote the analysis ...
Non-parametric density estimation methods are more flexible than parametric methods, due to the fact...
The composite likelihood (CL) is amongst the computational methods used for the estimation of high-d...
Today, we will go further on the inference of copula functions. Some codes (and references) can be f...
An important paradigmfor solving continuous optimization problems has been the use of the multivaria...
The objective of this paper is to estimate a bivariate density nonparametrically from a dataset from...