In this paper, a new measure of dependence is proposed. Our approach is based on transforming univariate data to the space where the marginal distributions are normally distributed and then, using the inverse transformation to obtain the distribution function in the original space. The pseudo-maximum likelihood method and the two-stage maximum likelihood approach are used to estimate the unknown parameters. It is shown that the estimated parameters are asymptotical normally distributed in both cases. Inference procedures for testing the independence are also studied
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...
AbstractIn this paper, a new measure of dependence is proposed. Our approach is based on transformin...
In this paper, a new measure of dependence is proposed. Our approach is based on transforming univar...
AbstractIn this paper, a new measure of dependence is proposed. Our approach is based on transformin...
A semiparametric method is developed for estimating the dependence parameter and the joint distribut...
We describe an algorithm to quantify dependence in a multivariate data set. The algorithm is able to...
AbstractThe problem of bivariate (multivariate) dependence has enjoyed the attention of researchers ...
We propose a method of dependence modeling for a broad class of multivariate data. Multivariate Gaus...
International audienceThis paper proposes a semi-parametric test of independence (or serial independ...
An estimation approach is proposed for models for a multivariate (non-normal) response with covariat...
Abstract. This paper presents a new estimation procedure for the limit distribution of the maximum o...
AbstractThis paper provides a method of constructing multivariate distributions where both univariat...
In this thesis, we focus on inference problems for time series and functional data and develop new m...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...
AbstractIn this paper, a new measure of dependence is proposed. Our approach is based on transformin...
In this paper, a new measure of dependence is proposed. Our approach is based on transforming univar...
AbstractIn this paper, a new measure of dependence is proposed. Our approach is based on transformin...
A semiparametric method is developed for estimating the dependence parameter and the joint distribut...
We describe an algorithm to quantify dependence in a multivariate data set. The algorithm is able to...
AbstractThe problem of bivariate (multivariate) dependence has enjoyed the attention of researchers ...
We propose a method of dependence modeling for a broad class of multivariate data. Multivariate Gaus...
International audienceThis paper proposes a semi-parametric test of independence (or serial independ...
An estimation approach is proposed for models for a multivariate (non-normal) response with covariat...
Abstract. This paper presents a new estimation procedure for the limit distribution of the maximum o...
AbstractThis paper provides a method of constructing multivariate distributions where both univariat...
In this thesis, we focus on inference problems for time series and functional data and develop new m...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...
In the world of multivariate extremes, estimation of the dependence structure still presents a chall...