The dependence between random variables may be measured by mutual information. However, the estimation of mutual information is difficult since the estimation of the joint probability density function (PDF) of non-Gaussian distributed data is a hard problem. Copulas offer a natural approach for estimating mutual information, since the joint probability density function of random variables can be expressed as the product of the associated copula density function and marginal PDFs. The experiment demonstrates that the proposed copulas-based mutual information is much more accurate than conventional methods such as the joint histogram and Parzen window based mutual information that are widely used in image processing
This paper presents algorithms for generating random variables for exponential/Rayleigh/Weibull, Nak...
ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, ...
We propose a new framework to learn non-parametric graphical models from continuous observational da...
This paper explores a new measure for band selection of hyperspectral images using copulas-based mut...
A copula function can be employed to decompose the information content of a multivariate distributio...
A copula function can be employed to decompose the information content of a multivariate distributio...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
We discuss the connection between information and copula theories by showing that a copula can be em...
In this paper, a method for characterizing the dependence between two random variables is presented ...
This paper explores a new measure, based on the copula density functions, for image registration, es...
A new, non–parametric and binless estimator for the mutual information of a d–dimensional random vec...
The paper presents a new copula based method for measuring dependence between random variables. Our ...
Determining distributions of the functions of random variables is one of the most important problems...
Accurately and adequately modeling and analyzing relationships in real random phenomena involving se...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
This paper presents algorithms for generating random variables for exponential/Rayleigh/Weibull, Nak...
ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, ...
We propose a new framework to learn non-parametric graphical models from continuous observational da...
This paper explores a new measure for band selection of hyperspectral images using copulas-based mut...
A copula function can be employed to decompose the information content of a multivariate distributio...
A copula function can be employed to decompose the information content of a multivariate distributio...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
We discuss the connection between information and copula theories by showing that a copula can be em...
In this paper, a method for characterizing the dependence between two random variables is presented ...
This paper explores a new measure, based on the copula density functions, for image registration, es...
A new, non–parametric and binless estimator for the mutual information of a d–dimensional random vec...
The paper presents a new copula based method for measuring dependence between random variables. Our ...
Determining distributions of the functions of random variables is one of the most important problems...
Accurately and adequately modeling and analyzing relationships in real random phenomena involving se...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
This paper presents algorithms for generating random variables for exponential/Rayleigh/Weibull, Nak...
ABSTRACT. Assume we have a dataset, Z say, from the joint distribution of random variables X and Y, ...
We propose a new framework to learn non-parametric graphical models from continuous observational da...