We propose a copula-based joint modeling framework for mixed longitudinal responses. Our approach permits all model parameters to vary with time, and thus will enable researchers to reveal dynamic response-predictor relationships and response-response associations. We call the new class of models TIMECOP because we model dependence using a time-varying copula. We develop a one-step estimation procedure for the TIMECOP parameter vector, and also describe how to estimate standard errors. We investigate the finite sample performance of our procedure via three simulation studies, one of which shows that our procedure performs well under ignorable missingness. We also illustrate the applicability of our approach by analyzing binary and continuou...
Research projects in the area of multivariate financial time-series are of a particular interest for...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
Motivated by Womens' Interagency HIV Study (WIHS), we propose an intuitive time-varying joint model ...
Motivated by a preclinical study in a mouse model of breast cancer, we suggest a joint modeling fram...
This paper develops a class of parametric models for longitudinal data with non-random drop-outs. Ma...
Our focus is on the joint analysis of longitudinal nonnormal responses and early discontinuation in ...
Motivated by an empirical analysis of ecological momentary assessment data (EMA) collected in a smok...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
The work presented as part of this dissertation is primarily motivated by a randomized trial for HIV...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
Purpose – This paper aims to statistically model the serial dependence in the first and second momen...
We propose a semiparametric approach based on proportional hazards and copula method to jointly mode...
Research projects in the area of multivariate financial time-series are of a particular interest for...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
Motivated by Womens' Interagency HIV Study (WIHS), we propose an intuitive time-varying joint model ...
Motivated by a preclinical study in a mouse model of breast cancer, we suggest a joint modeling fram...
This paper develops a class of parametric models for longitudinal data with non-random drop-outs. Ma...
Our focus is on the joint analysis of longitudinal nonnormal responses and early discontinuation in ...
Motivated by an empirical analysis of ecological momentary assessment data (EMA) collected in a smok...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
The work presented as part of this dissertation is primarily motivated by a randomized trial for HIV...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
Purpose – This paper aims to statistically model the serial dependence in the first and second momen...
We propose a semiparametric approach based on proportional hazards and copula method to jointly mode...
Research projects in the area of multivariate financial time-series are of a particular interest for...
The theory of conditional copulas provides a means of constructing flexible multivariate density mod...
Motivated by Womens' Interagency HIV Study (WIHS), we propose an intuitive time-varying joint model ...