Quantification, i.e., the task of training predictors of the class prevalence values in sets of unlabeled data items, has received increased attention in recent years. However, most quantification research has concentrated on developing algorithms for binary and multiclass problems in which the classes are not ordered. Here, we study the ordinal case, i.e., the case in which a total order is defined on the set of n>2 classes. We give three main contributions to this field. First, we create and make available two datasets for ordinal quantification (OQ) research that overcome the inadequacies of the previously available ones. Second, we experimentally compare the most important OQ algorithms proposed in the literature so far. To this end, we...
Ordinal classification refers to classification problems in which the classes have a natural order i...
This paper considers new techniques for complex surveys in the case of estimation of proportions wh...
International audienceOrdinal data are used in many domains, especially when measurements are collec...
Quantification,i.e.,thetaskoftrainingpredictorsoftheclass prevalence values in sets of unlabelled da...
This data set comprises a labeled training set, validation samples, and testing samples for ordinal ...
Currently, the use of deep learning for solving ordinal classification problems, where categories fo...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
This dissertation studies the problem of causal inference for ordinal outcomes. Chapter 1 focuses on...
Ordinal classification refers to classification problems in which the classes have a natural order ...
The classification of patterns into naturally ordered labels is referred to as ordinal regression. ...
Ordinal classifiers are constrained classification algorithms that assume a predefined (total) order...
Acknowledgments: We would like to thank seminar participants at Heriot-Watt and conference participa...
Existing ordinal embedding methods usually follow a twostage routine: outlier detection is first emp...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
Ordinal classification refers to classification problems in which the classes have a natural order i...
This paper considers new techniques for complex surveys in the case of estimation of proportions wh...
International audienceOrdinal data are used in many domains, especially when measurements are collec...
Quantification,i.e.,thetaskoftrainingpredictorsoftheclass prevalence values in sets of unlabelled da...
This data set comprises a labeled training set, validation samples, and testing samples for ordinal ...
Currently, the use of deep learning for solving ordinal classification problems, where categories fo...
Ordinal regression problems are those machine learning problems where the objective is to classify p...
Ordinal (i.e., ordered) classifiers are used to make judgments that we make on a regular basis, both...
This dissertation studies the problem of causal inference for ordinal outcomes. Chapter 1 focuses on...
Ordinal classification refers to classification problems in which the classes have a natural order ...
The classification of patterns into naturally ordered labels is referred to as ordinal regression. ...
Ordinal classifiers are constrained classification algorithms that assume a predefined (total) order...
Acknowledgments: We would like to thank seminar participants at Heriot-Watt and conference participa...
Existing ordinal embedding methods usually follow a twostage routine: outlier detection is first emp...
This article describes an R package bqror that estimates Bayesian quantile regression for ordinal mo...
Ordinal classification refers to classification problems in which the classes have a natural order i...
This paper considers new techniques for complex surveys in the case of estimation of proportions wh...
International audienceOrdinal data are used in many domains, especially when measurements are collec...