old model, latent variable Ordinal classification refers to classification problems in which the classes have a natu-ral order imposed on them because of the nature of the concept studied. Some ordinal classification approaches perform a projection from the input space to 1-dimensional (latent) space that is partitioned into a sequence of intervals (one for each class). Class identity of a novel input pattern is then decided based on the interval its projection falls into. This projection is trained only indirectly as part of the overall model fitting. As with any latent model fitting, direct construction hints one may have about the desired form of the latent model can prove very useful for obtaining high quality models. The key idea of th...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
Given an ordered class, one is not only interested in minimizing the classification error, but also ...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Ordinal classification refers to classification problems in which the classes have a natural order ...
. This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) class...
Ordinal input variables are common in many supervised and unsupervised machine learning problems. We...
© 2015 by Taylor & Francis Group, LLC. In this chapter, a novel application-independent performanc...
The performance of a classifier is often limited by the amount of labeled data (absolute information...
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...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
Given an ordered class, one is not only interested in minimizing the classification error, but also ...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Ordinal classification refers to classification problems in which the classes have a natural order ...
. This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) class...
Ordinal input variables are common in many supervised and unsupervised machine learning problems. We...
© 2015 by Taylor & Francis Group, LLC. In this chapter, a novel application-independent performanc...
The performance of a classifier is often limited by the amount of labeled data (absolute information...
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...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Abstract. We show that classification rules used in ordinal regression are equivalent to a certain c...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
Given an ordered class, one is not only interested in minimizing the classification error, but also ...