Ordinal predictors are commonly used in regression models. They are often incorrectly treated as either nominal or metric, thus under- or overestimating the information contained. Such practices may lead to worse inference and predictions compared to methods which are specifically designed for this purpose. We propose a new method for modelling ordinal predictors that applies in situations in which it is reasonable to assume their effects to be monotonic. The parameterization of such monotonic effects is realized in terms of a scale parameter b representing the direction and size of the effect and a simplex parameter sigma modelling the normalized differences between categories. This ensures that predictions increase or decrease monotonical...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This thesis describes a number of new data mining algorithms which were the result of our research i...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
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...
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...
Compared to the nominal scale, the ordinal scale for a categorical outcome variable has the property...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This thesis describes a number of new data mining algorithms which were the result of our research i...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
Ordinal predictors are commonly used in regression models. They are often incorrectly treated as eit...
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...
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...
Compared to the nominal scale, the ordinal scale for a categorical outcome variable has the property...
Traditional approaches to ordinal regression rely on strong parametric assumptions for the regressio...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
We survey effect measures for models for ordinal categorical data that can be simpler to interpre...
Ordinal variables—categorical variables with a defined order to the categories, but without equal sp...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This thesis describes a number of new data mining algorithms which were the result of our research i...