In this paper, we address the problem of multi-label classification. We consider linear classifiers and propose to learn a prior over the space of labels to directly leverage the performance of such methods. This prior takes the form of a quadratic function of the labels and permits to encode both attractive and repulsive relations between labels. We cast this problem as a structured prediction one aiming at optimizing either the accuracies of the predictors or the F 1-score. This leads to an optimization problem closely related to the max-cut problem, which naturally leads to semidefinite and spectral relaxations. We show on standard datasets how such a general prior can improve the performances of multi-label techniques
Abstract—The area of multi-label classification has rapidly developed in recent years. It has become...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Partial multi-label learning (PML) aims to learn from training examples each associated with a set o...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
Multi-label was introduced as an extension of multi-class classification. The aim is to predict a se...
The multi-label classification task has been widely used to solve problems where each of the instanc...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
Multi-label classification is the task of predicting potentially multiple labels for a given instanc...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
Multi-label classification is the task of predicting potentially multiple labels for a given instanc...
Multi-label Classification is the supervised learning problem where an instance is associated with m...
A hypergraph is a generalization of the traditional graph in which the edges are arbitrary non-empty...
We propose a general class of label configuration pri-ors for continuous multi-label optimization pr...
Abstract—The area of multi-label classification has rapidly developed in recent years. It has become...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Partial multi-label learning (PML) aims to learn from training examples each associated with a set o...
Labeled data is often sparse in common learning scenarios, either because it is too time consuming o...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
Multi-label was introduced as an extension of multi-class classification. The aim is to predict a se...
The multi-label classification task has been widely used to solve problems where each of the instanc...
In this paper we present an algorithm to learn a multi-label classifier which attempts at directly o...
Multi-label classification is the task of predicting potentially multiple labels for a given instanc...
Abstract. Labeled data is often sparse in common learning scenarios, either because it is too time c...
Multi-label classification is the task of predicting potentially multiple labels for a given instanc...
Multi-label Classification is the supervised learning problem where an instance is associated with m...
A hypergraph is a generalization of the traditional graph in which the edges are arbitrary non-empty...
We propose a general class of label configuration pri-ors for continuous multi-label optimization pr...
Abstract—The area of multi-label classification has rapidly developed in recent years. It has become...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Partial multi-label learning (PML) aims to learn from training examples each associated with a set o...