Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The challenge of designing accurate classifiers for ordinal regression generally increases with the number of classes involved, due to the large number of labeled patterns that are needed. The availability of ordinal class labels, however, is often costly to calibrate or difficult to obtain. Unlabeled patterns, on the other hand, often exist in much greater abundance and are freely available. To take benefits from the abundance of unlabeled patterns, we present a novel transductive learning paradigm for ordinal regression in this paper, namely transductive ordinal regression (TOR). The key challenge of this paper lies in the precise estimation of bot...
. This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) class...
Machine learning methods for classification problems commonly assume that the class values are unord...
We present a reduction framework from ordinal regression to binary classification based on extended ...
Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The chal...
Recently, ordinal regression, which predicts categories of ordinal scale, has received considerable ...
Ordinal regression is a common supervised learning problem sharing properties with both regression a...
In this work, we present a regression-based ordinal regression algorithm for supervised classificati...
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...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
We present a reduction framework from ordinal regression to binary classification based on extended ...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
We consider a predictive modelling problem, where the goal is to predict the absolute evaluation of ...
Ordinal classification (also known as ordinal regression) is a supervised learning task that consist...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
. This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) class...
Machine learning methods for classification problems commonly assume that the class values are unord...
We present a reduction framework from ordinal regression to binary classification based on extended ...
Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The chal...
Recently, ordinal regression, which predicts categories of ordinal scale, has received considerable ...
Ordinal regression is a common supervised learning problem sharing properties with both regression a...
In this work, we present a regression-based ordinal regression algorithm for supervised classificati...
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...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
We present a reduction framework from ordinal regression to binary classification based on extended ...
Ordinal regression is a supervised learning problem which aims to classify instances into ordinal ca...
We consider a predictive modelling problem, where the goal is to predict the absolute evaluation of ...
Ordinal classification (also known as ordinal regression) is a supervised learning task that consist...
This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) classes...
. This paper is devoted to the problem of learning to predict ordinal (i.e., ordered discrete) class...
Machine learning methods for classification problems commonly assume that the class values are unord...
We present a reduction framework from ordinal regression to binary classification based on extended ...