A non-parametric implementation of the bivariate Dale model (BDM) is presented as an extension of the generalized additive model (GAM) of Hastie and Tibshirani. The original BDM is an example of a bivariate generalized linear model. In this paper smoothing is introduced on the marginal as well as on the association level. Our non-parametric procedure can be used as a diagnostic tool for identifying parametric transformations of the covariates in the linear BDM, hence it also provides a kind of goodness-of-fit test for a bivariate generalized linear model. Cubic smoothing spline functions for the covariates are estimated by maximizing a penalized version of the log-likelihood. The method is applied to two studies. The first study is the clas...
[[abstract]]A nonparametric local linear smoothing technique for testing goodness-of-fit of ordinal ...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...
Abstract: Statistical modelling for ordinal data has received a considerable attention in the litera...
An extension of the bivariate model suggested by Dale is proposed for the analysis of dependent ordi...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
<p>Univariate, bivariate and adjusted results of generalized linear mixed effect ordinal logit model...
<p>Univariate, bivariate and adjusted results of generalized linear mixed effect ordinal logit model...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
ABSTRACT. The proportional odds model (POM) is the most popular logistic regression model for analyz...
[[abstract]]A nonparametric local linear smoothing technique for testing goodness-of-fit of ordinal ...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...
Abstract: Statistical modelling for ordinal data has received a considerable attention in the litera...
An extension of the bivariate model suggested by Dale is proposed for the analysis of dependent ordi...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
Statistical modelling for ordinal data has received a considerable attention in the literature, and ...
In statistics, linear modelling techniques are widely used methods to explain one variable by others...
<p>Univariate, bivariate and adjusted results of generalized linear mixed effect ordinal logit model...
<p>Univariate, bivariate and adjusted results of generalized linear mixed effect ordinal logit model...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
A new class of models, generalized additive mixed models (GAMMs), are proposed for analyzing correla...
ABSTRACT. The proportional odds model (POM) is the most popular logistic regression model for analyz...
[[abstract]]A nonparametric local linear smoothing technique for testing goodness-of-fit of ordinal ...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
[[abstract]]Longitudinal ordinal responses are commonly analyzed in biomedical studies and are often...