Multi-label learning is a specific supervised learning problem where each instance can be associated with multiple target labels simultaneously. Multi-label learning is ubiquitous in machine learning and arises naturally in many real-world applications such as document classification, automatic music tagging and image annotation. In this thesis, we formulate the multi-label learning as an ensemble learning problem in order to provide satisfactory solutions for both the multi-label classification and the feature selection tasks, while being consistent with respect to any type of objective loss function. We first discuss why the state-of-the art single multi-label algorithms using an effective committee of multi-label models suffer from certa...
With the advent and rapid growth of digital technologies, data has become a precious asset as well a...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
Multi-label classification is an extension of traditional single-label classification, where classes...
Multi-label classification is an extension of traditional single-label classification, where classes...
La classification multi-label est une extension de la classification traditionnelle dans laquelle le...
La classification multi-label est une extension de la classification traditionnelle dans laquelle le...
Stimulated by many applications such as documents or images annotation, multi- label learning have g...
Stimulated by many applications such as documents or images annotation, multi- label learning have g...
Multilabel classification is a challenging research problem in which each instance is assigned to a ...
In machine learning, classification algorithms are used to train models to recognise the class, or c...
In machine learning, classification algorithms are used to train models to recognise the class, or c...
L'apprentissage avec des données partiellement étiquetées, connu sous le nom d'apprentissage semi-su...
With the advent and rapid growth of digital technologies, data has become a precious asset as well a...
With the advent and rapid growth of digital technologies, data has become a precious asset as well a...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
Multi-label classification is an extension of traditional single-label classification, where classes...
Multi-label classification is an extension of traditional single-label classification, where classes...
La classification multi-label est une extension de la classification traditionnelle dans laquelle le...
La classification multi-label est une extension de la classification traditionnelle dans laquelle le...
Stimulated by many applications such as documents or images annotation, multi- label learning have g...
Stimulated by many applications such as documents or images annotation, multi- label learning have g...
Multilabel classification is a challenging research problem in which each instance is assigned to a ...
In machine learning, classification algorithms are used to train models to recognise the class, or c...
In machine learning, classification algorithms are used to train models to recognise the class, or c...
L'apprentissage avec des données partiellement étiquetées, connu sous le nom d'apprentissage semi-su...
With the advent and rapid growth of digital technologies, data has become a precious asset as well a...
With the advent and rapid growth of digital technologies, data has become a precious asset as well a...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...
Multi-label learning handles datasets where each instance is associated with multiple labels, which ...