AbstractCopula as an effective way of modeling dependence has become more or less a standard tool in risk management, and a wide range of applications of copula models appear in the literature of economics, econometrics, insurance, finance, etc. How to estimate and test a copula plays an important role in practice, and both parametric and nonparametric methods have been studied in the literature. In this paper, we focus on interval estimation and propose an empirical likelihood based confidence interval for a copula. A simulation study and a real data analysis are conducted to compare the finite sample behavior of the proposed empirical likelihood method with the bootstrap method based on either the empirical copula estimator or the kernel ...
Quantitative studies in many fields involve the analysis of multivariate data of diverse types, incl...
Copulas provide a potential useful modeling tool to represent the dependence structure among variab...
The paper considers likelihood-based estimation of multivariate models, in which only marginal distr...
Copulas are used to depict dependence among several random variables. Both parametric and non-parame...
In the present paper, we are mainly concerned with the statistical inference for the functional of n...
Copulas are used to model multivariate data as they account for the dependence structure and provide...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The empirical beta copula is a simple but effective smoother of the empirical copula. Because it is ...
Diploma thesis abstract Thesis title: Statistical inference in multivariate distributions based on c...
The empirical beta copula is a simple but effective smoother of the empirical copula. Because it is ...
This paper is concerned with inference about the dependence or association between two random variab...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
At the heart of the copula methodology in statistics is the idea of separating marginal distribution...
At the heart of the copula methodology in statistics is the idea of separating marginal distribution...
Copula models are nowadays widely used in multivariate data analysis. Major areas of application inc...
Quantitative studies in many fields involve the analysis of multivariate data of diverse types, incl...
Copulas provide a potential useful modeling tool to represent the dependence structure among variab...
The paper considers likelihood-based estimation of multivariate models, in which only marginal distr...
Copulas are used to depict dependence among several random variables. Both parametric and non-parame...
In the present paper, we are mainly concerned with the statistical inference for the functional of n...
Copulas are used to model multivariate data as they account for the dependence structure and provide...
In this paper we provide a brief survey of some parametric estimation procedures for copula models. ...
The empirical beta copula is a simple but effective smoother of the empirical copula. Because it is ...
Diploma thesis abstract Thesis title: Statistical inference in multivariate distributions based on c...
The empirical beta copula is a simple but effective smoother of the empirical copula. Because it is ...
This paper is concerned with inference about the dependence or association between two random variab...
Copulas are full measures of dependence among random variables. They are increasingly popular among...
At the heart of the copula methodology in statistics is the idea of separating marginal distribution...
At the heart of the copula methodology in statistics is the idea of separating marginal distribution...
Copula models are nowadays widely used in multivariate data analysis. Major areas of application inc...
Quantitative studies in many fields involve the analysis of multivariate data of diverse types, incl...
Copulas provide a potential useful modeling tool to represent the dependence structure among variab...
The paper considers likelihood-based estimation of multivariate models, in which only marginal distr...