Ordinal classification considers those classification problems where the labels of the variable to predict follow a given order. Naturally, labelled data is scarce or difficult to obtain in this type of problems because, in many cases, ordinal labels are given by a user or expert (e.g. in recommendation systems). Firstly, this paper develops a new strategy for ordinal classification where both labelled and unlabelled data are used in the model construction step (a scheme which is referred to as semi-supervised learning). More specifically, the ordinal version of kernel discriminant learning is extended for this setting considering the neighbourhood information of unlabelled data, which is proposed to be computed in the feature space induced...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Discriminative learning framework is one of the very successful fields of machine learning. The meth...
Ordinal classification considers those classification problems where the labels of the variable to p...
Ordinal classi cation considers those classi cation problems where the labels of the variable to pr...
Semisupervised learning is a type of machine learning technique that constructs a classifier by lear...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract. Semi-supervised learning methods constitute a category of machine learning methods which u...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
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...
The aim of this research project is to propose a new method for supervised classification problems ...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
Ordinal classification refers to classification problems in which the classes have a natural order ...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Discriminative learning framework is one of the very successful fields of machine learning. The meth...
Ordinal classification considers those classification problems where the labels of the variable to p...
Ordinal classi cation considers those classi cation problems where the labels of the variable to pr...
Semisupervised learning is a type of machine learning technique that constructs a classifier by lear...
Machine learning methods for classification problems commonly assume that the class values are unord...
Abstract. Semi-supervised learning methods constitute a category of machine learning methods which u...
Ordinal classification (OC) is an important niche of supervised pattern recognition, in which the cl...
Regularized Kernel Discriminant Analysis (RKDA) performs linear discriminant analysis in the feature...
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...
The aim of this research project is to propose a new method for supervised classification problems ...
The performance of an ordinal classifier is highly affected by the amount of absolute information (l...
Ordinal classification refers to classification problems in which the classes have a natural order ...
Classification of ordinal data is one of the most important tasks of relation learning. This paper i...
Ordinal classification refers to classification problems in which the classes have a natural order i...
Discriminative learning framework is one of the very successful fields of machine learning. The meth...