Ordered categorial predictors are a common case in regression modeling. In contrast to the case of ordinal response variables, ordinal predictors have been largely neglected in the literature. In this article penalized regression techniques are proposed. Based on dummy coding two types of penalization are explicitly developed; the first imposes a difference penalty, the second is a ridge type refit-ting procedure. A Bayesian motivation as well as alternative ways of derivation are provided. Simulation studies and real world data serve for illustration and to compare the approach to methods often seen in practice, namely linear regression on the group labels and pure dummy coding. The proposed regression techniques turn out to be highly comp...
This paper discusses the ordinal dummy variable coding system and its use on categorical data. In th...
The use of categorical variables in regression modeling is discussed. Some pitfalls in the use of nu...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordered categorial predictors are a common case in regression modelling. In contrast to the case of ...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
This paper considers four approaches to ordinal predictors in linear regression to evaluate how thes...
Ordinal categorial variables are a common case in regression modeling. Al-though the case of ordinal...
This paper discusses the ordinal dummy variable coding system and its use on categorical data. In th...
The use of categorical variables in regression modeling is discussed. Some pitfalls in the use of nu...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordered categorial predictors are a common case in regression modelling. In contrast to the case of ...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
Ordered categorial predictors are a common case in regression modeling. In contrast to the case of o...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
In multi-category response models categories are often ordered. In case of ordinal response models, ...
This paper considers four approaches to ordinal predictors in linear regression to evaluate how thes...
Ordinal categorial variables are a common case in regression modeling. Al-though the case of ordinal...
This paper discusses the ordinal dummy variable coding system and its use on categorical data. In th...
The use of categorical variables in regression modeling is discussed. Some pitfalls in the use of nu...
Ordinal regression problems are those machine learning problems where the objective is to classify p...