Longitudinal data frequently arises in various fields of applied sciences where individuals are measured according to some ordered variable, e.g. time. A common approach used to model such data is based on the mixed models for repeated measures. This model provides an eminently flexible approach to modeling of a wide range of mean and covariance structures. However, such models are forced into a rigidly defined class of mathematical formulas which may not be well supported by the data within the whole sequence of observations. A possible non-parametric alternative is a cubic smoothing spline, which is highly flexible and has useful smoothing properties. It can be shown that under normality assumption, the solution of the penalized log-likel...
This article considers analyzing longitudinal binary data semiparametrically and proposing GEE-Smoot...
This thesis discusses semiparametric regression models that provide a flexible tool for modelling lo...
Abstract Background Childhood growth is a cornerstone of pediatric research. Statistical models need...
this paper provides the mechanism for including cubic smoothing splines in models for the analysis o...
We introduce a class of models for an additive decomposition of groups of curves strati ed by crosse...
In designed experiments and in particular longitudinal studies, the aim may be to assess the effect ...
Brumback and Rice are to be congratulated for this neat and excellent paper on the smoothing spline ...
Linear mixed effects methods for the analysis of longitudinal data provide a convenient framework fo...
A penalized spline approximation is proposed in considering nonparametric regression for longitudina...
This paper considers nonparametric regression to analyze longitudinal binary data. In this paper we ...
This paper considers analyzing longitudinal data semiparametrically and proposing GEE-Smoothing spli...
We present a simple semiparametric model for fitting subject-specific curves for longitudinal data. ...
The six cities air pollution is used to estimate and investigate the marginal curve of a function de...
This paper proposes nonparametric regression model to analyze longitudinal data. We combine natural ...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
This article considers analyzing longitudinal binary data semiparametrically and proposing GEE-Smoot...
This thesis discusses semiparametric regression models that provide a flexible tool for modelling lo...
Abstract Background Childhood growth is a cornerstone of pediatric research. Statistical models need...
this paper provides the mechanism for including cubic smoothing splines in models for the analysis o...
We introduce a class of models for an additive decomposition of groups of curves strati ed by crosse...
In designed experiments and in particular longitudinal studies, the aim may be to assess the effect ...
Brumback and Rice are to be congratulated for this neat and excellent paper on the smoothing spline ...
Linear mixed effects methods for the analysis of longitudinal data provide a convenient framework fo...
A penalized spline approximation is proposed in considering nonparametric regression for longitudina...
This paper considers nonparametric regression to analyze longitudinal binary data. In this paper we ...
This paper considers analyzing longitudinal data semiparametrically and proposing GEE-Smoothing spli...
We present a simple semiparametric model for fitting subject-specific curves for longitudinal data. ...
The six cities air pollution is used to estimate and investigate the marginal curve of a function de...
This paper proposes nonparametric regression model to analyze longitudinal data. We combine natural ...
Regressions using variables categorized or listed numerically, like 1st one, 2nd one, etc. – such as...
This article considers analyzing longitudinal binary data semiparametrically and proposing GEE-Smoot...
This thesis discusses semiparametric regression models that provide a flexible tool for modelling lo...
Abstract Background Childhood growth is a cornerstone of pediatric research. Statistical models need...