A parametric model for longitudinal ordered categorical data is proposed. The marginal distributions are modeled using standard regression models and the association between pairs of successive margins is characterized by a set of bivariate copula distributions under a first order Markov hypothesis. Several bivariate copula families, including Frank’s, Plackett’s, Clayton’s, Joe’s and Mardia’s are used to model the association between successive responses. The corresponding log-likelihood is written in terms of the initial margin and of the transition probabilities.Parameters from the marginal regression model and from the pairwise association copula are estimated by direct likelihood maximization. The method is illustrated by analyzing dat...
There is a great deal of literature on modeling (separately) either the univariate or joint distribu...
SummaryModeling the joint distribution of a binary trait (disease) within families is a tedious chal...
The copula-based modeling of multivariate distributions with continuous margins is presented as a su...
This paper develops a class of parametric models for longitudinal data with non-random drop-outs. Ma...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
In many cases of modeling bivariate count data, the interest lies on studying the association rather...
This is the first book in longitudinal categorical data analysis with parametric correlation models ...
Multivariate survival data are characterized by the presence of correlation between event times with...
Quantitative studies in many fields involve the analysis of multivariate data of diverse types, incl...
In this research we introduce a new class of multivariate probability models to the marketing litera...
In this project we introduce the use of copulas for dealing with residual dependencies in item respo...
We are studying linear and log-linear models for multivariate count time series data with Poisson ma...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
In this paper, we consider "heavy-tailed" data, that is, data where extreme values are likely to occ...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
There is a great deal of literature on modeling (separately) either the univariate or joint distribu...
SummaryModeling the joint distribution of a binary trait (disease) within families is a tedious chal...
The copula-based modeling of multivariate distributions with continuous margins is presented as a su...
This paper develops a class of parametric models for longitudinal data with non-random drop-outs. Ma...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
In many cases of modeling bivariate count data, the interest lies on studying the association rather...
This is the first book in longitudinal categorical data analysis with parametric correlation models ...
Multivariate survival data are characterized by the presence of correlation between event times with...
Quantitative studies in many fields involve the analysis of multivariate data of diverse types, incl...
In this research we introduce a new class of multivariate probability models to the marketing litera...
In this project we introduce the use of copulas for dealing with residual dependencies in item respo...
We are studying linear and log-linear models for multivariate count time series data with Poisson ma...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
In this paper, we consider "heavy-tailed" data, that is, data where extreme values are likely to occ...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
There is a great deal of literature on modeling (separately) either the univariate or joint distribu...
SummaryModeling the joint distribution of a binary trait (disease) within families is a tedious chal...
The copula-based modeling of multivariate distributions with continuous margins is presented as a su...