Compared to the nominal scale, the ordinal scale for a categorical outcome variable has the property of making a monotonicity assumption for the covariate effects meaningful. This assumption is encoded in the commonly used proportional odds model, but there it is combined with other parametric assumptions such as linearity and additivity. Herein, the considered models are non-parametric and the only condition imposed is that the effects of the covariates on the outcome categories are stochastically monotone according to the ordinal scale. We are not aware of the existence of other comparable multivariable models that would be suitable for inference purposes. We generalize our previously proposed Bayesian monotonic multivariable regression m...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
This article proposes a nonparametric test of monotonicity for conditional distributions and its mom...
The need for building and generating statistically dependent random variables arises in various fiel...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
ArticleThe use of the proportional odds (PO) model for ordinal regression is ubiquitous in the liter...
The use of the proportional odds (PO) model for ordinal regression is ubiquitous in the literature. ...
Correlated ordinal data are often assumed to arise from an underlying latent continu-ous parametric ...
We develop a nonparametric Bayesian modeling approach to ordinal regression based on priors placed d...
We present a class of multivariate regression models for ordinal response variables in which the coe...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
A pair of polychotomous random variables (Y1,Y2)⊤=:YY(Y1,Y2)⊤=:YY, where each YjYj has a totally ord...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
This article proposes a nonparametric test of monotonicity for conditional distributions and its mom...
The need for building and generating statistically dependent random variables arises in various fiel...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
A regression model is proposed for the analysis of an ordinal response variable depending on a set o...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
ArticleThe use of the proportional odds (PO) model for ordinal regression is ubiquitous in the liter...
The use of the proportional odds (PO) model for ordinal regression is ubiquitous in the literature. ...
Correlated ordinal data are often assumed to arise from an underlying latent continu-ous parametric ...
We develop a nonparametric Bayesian modeling approach to ordinal regression based on priors placed d...
We present a class of multivariate regression models for ordinal response variables in which the coe...
Kauermann G, Tutz G. Semi- and nonparametric modeling of ordinal data. JOURNAL OF COMPUTATIONAL AND ...
A pair of polychotomous random variables (Y1,Y2)⊤=:YY(Y1,Y2)⊤=:YY, where each YjYj has a totally ord...
Modeling and predicting of ordinal outcomes have become essential study to many statisticians due to...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
This article proposes a nonparametric test of monotonicity for conditional distributions and its mom...
The need for building and generating statistically dependent random variables arises in various fiel...