Ordinal input variables are common in many supervised and unsupervised machine learning problems. We focus on ordinal classification problems, where the target variable is also categorical and ordinal. In order to represent categorical input variables for measuring distances or applying continuous mapping functions, they have to be transformed to numeric values. This paper evaluates five different methods to do so. Two of them are commonly applied by practitioners, the first one based on binarising the ordinal input variable using standard indicator variables (NomBin), and the second one based on directly mapping each category to a consecutive natural number (Num). Furthermore, three novel proposals are evaluated in this paper: 1) an ordina...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
none1noThe aim of this research project is to propose a new method for supervised classification pr...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
Ordinal input variables are common in many supervised and unsupervised machine learning problems. We...
A large amount of ordinal-valued data exist in many domains, including medical and health science, s...
Clustering ordinal data is a common task in data mining and machine learning fields. As a major type...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordinal classification refers to classification problems in which the classes have a natural order ...
The performance of a classifier is often limited by the amount of labeled data (absolute information...
old model, latent variable Ordinal classification refers to classification problems in which the cla...
© 2015 by Taylor & Francis Group, LLC. In this chapter, a novel application-independent performanc...
Machine learning methods for classification problems commonly assume that the class values are unord...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
Distances between data sets are used for analyses such as classification and clustering analyses. So...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
none1noThe aim of this research project is to propose a new method for supervised classification pr...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
Ordinal input variables are common in many supervised and unsupervised machine learning problems. We...
A large amount of ordinal-valued data exist in many domains, including medical and health science, s...
Clustering ordinal data is a common task in data mining and machine learning fields. As a major type...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordinal classification refers to classification problems in which the classes have a natural order ...
The performance of a classifier is often limited by the amount of labeled data (absolute information...
old model, latent variable Ordinal classification refers to classification problems in which the cla...
© 2015 by Taylor & Francis Group, LLC. In this chapter, a novel application-independent performanc...
Machine learning methods for classification problems commonly assume that the class values are unord...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
Distances between data sets are used for analyses such as classification and clustering analyses. So...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
none1noThe aim of this research project is to propose a new method for supervised classification pr...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...