Specifying a correlation matrix is challenging in quantile regression with longitudinal data. A naive method is simply to adopt an independence working model. However, the efficiency of parameter estimates may be lost. We propose constructing a working correlation matrix via Gaussian copula which can handle or incorporate general serial dependence. A suit of unbiased estimating functions can be obtained by assuming the Gaussian copula with different correlation matrices, and the empirical likelihood method can then combine these unbiased estimating functions. Furthermore, the induced smoothing approach is applied to the discontinuous estimating functions to reduce computation burdens. The asymptotic normality of the resulting estimators is ...
Summary. We introduce an approximation to the Gaussian copula likelihood of Song, Li, and Yuan (2009...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Gaussian copulas are handy tool in many applications. However, when dimension of data is large, ther...
Specifying a correlation matrix is challenging in quantile regression with longitudinal data. A naiv...
This paper proposes a linear quantile regression analysis method for longitudinal data that combines...
Quantile regression has become a powerful complement to the usual mean regression. A simple approach...
We propose, for multivariate Gaussian copula models with unknown margins and structured correlation ...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We propose, for multivariate Gaussian copula models with unknown margins and structured correlation ...
Quantile regression is a powerful statistical methodology that complements the classical linear regr...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We consider a new approach in quantile regression modeling based on the copula function that defines...
This paper identifies and develops the class of Gaussian copula models for marginal regression analy...
This paper identifies and develops the class of Gaussian copula models for marginal regression analy...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
Summary. We introduce an approximation to the Gaussian copula likelihood of Song, Li, and Yuan (2009...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Gaussian copulas are handy tool in many applications. However, when dimension of data is large, ther...
Specifying a correlation matrix is challenging in quantile regression with longitudinal data. A naiv...
This paper proposes a linear quantile regression analysis method for longitudinal data that combines...
Quantile regression has become a powerful complement to the usual mean regression. A simple approach...
We propose, for multivariate Gaussian copula models with unknown margins and structured correlation ...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We propose, for multivariate Gaussian copula models with unknown margins and structured correlation ...
Quantile regression is a powerful statistical methodology that complements the classical linear regr...
We consider a new approach in quantile regression modeling based on the copula function that defines...
We consider a new approach in quantile regression modeling based on the copula function that defines...
This paper identifies and develops the class of Gaussian copula models for marginal regression analy...
This paper identifies and develops the class of Gaussian copula models for marginal regression analy...
We consider the analysis of longitudinal data when the covariance function is modeled by additional ...
Summary. We introduce an approximation to the Gaussian copula likelihood of Song, Li, and Yuan (2009...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Gaussian copulas are handy tool in many applications. However, when dimension of data is large, ther...