Arminger and Sobel(1990) proposed an approach to estimate mean- and covariance structures in the presence of missing data. These authors claimed that their method based on Pseudo Maximum Likelihood (PML) estimation may be applied if the data are missing at random (MAR) in the sense of Little and Rubin (1987). Rotnitzky and Robins (1995), however, stated that the PML approach may yield inconsistent estimates if the data are (MAR). We show that the adoption of the PML approach for mean- and covariance structures to mean structures in the presence of missing data as proposed by Ziegler (1994) is identical to the complete case (CC) estimator. Nevertheless, the PML approach has the computational advantage in that the association structure remain...
Varying coefficient models with discrete values of the effect modifier may be estimated by maximum l...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
An unknown signal plus white noise is observed at n discretetime points. Within a large convex class...
Arminger and Sobel(1990) proposed an approach to estimate mean- and covariance structures in the pre...
This paper presents methods to analyze and detect non-MCAR processes that lead to missing covariate ...
This paper examines improved regression methods for the linear multivariable measurement error model...
We consider the problem of estimating quantile regression coefficients in errors-in-variables models...
A particular semiparametric model of interest is the generalized partial linear model (GPLM) which a...
We construct pointwise confidence intervals for regression functions. The method uses nonparametric ...
We consider the partially linear model relating a response Y to predictors (X,T) with mean function ...
When prior estimates of regression coefficients along with their stan¡ dard errors or their variance...
Common nonparametric curve fitting methods such as spline smoothing, local polynomial regression and...
We consider the problem of estimating the unknown breakpoints in segmented generalized linear models...
In the present paper a mixed generalized estimating/pseudoscore equations (GEPSE) approach together...
Varying coefficient models with discrete values of the effect modifier may be estimated by maximum l...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
An unknown signal plus white noise is observed at n discretetime points. Within a large convex class...
Arminger and Sobel(1990) proposed an approach to estimate mean- and covariance structures in the pre...
This paper presents methods to analyze and detect non-MCAR processes that lead to missing covariate ...
This paper examines improved regression methods for the linear multivariable measurement error model...
We consider the problem of estimating quantile regression coefficients in errors-in-variables models...
A particular semiparametric model of interest is the generalized partial linear model (GPLM) which a...
We construct pointwise confidence intervals for regression functions. The method uses nonparametric ...
We consider the partially linear model relating a response Y to predictors (X,T) with mean function ...
When prior estimates of regression coefficients along with their stan¡ dard errors or their variance...
Common nonparametric curve fitting methods such as spline smoothing, local polynomial regression and...
We consider the problem of estimating the unknown breakpoints in segmented generalized linear models...
In the present paper a mixed generalized estimating/pseudoscore equations (GEPSE) approach together...
Varying coefficient models with discrete values of the effect modifier may be estimated by maximum l...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
An unknown signal plus white noise is observed at n discretetime points. Within a large convex class...