In recent years, the multi-label classification gained attention of the scientific community given its ability to solve real-world problems where each instance of the dataset may be associated with several class labels simultaneously, such as multimedia categorization or medical problems. The first objective of this dissertation is to perform a thorough review of the state-of-the-art ensembles of multi-label classifiers (EMLCs). Its aim is twofold: 1) study state-of-the-art ensembles of multi-label classifiers and categorize them proposing a novel taxonomy; and 2) perform an experimental study to give some tips and guidelines to select the method that perform the best according to the characteristics of a given problem. Since most of the EM...
Multi-label classification is an extension of conventional classification in which a single instance...
This paper introduces a multi-label classification prob-lem to the field of human computation. The p...
Multi-label classification is an extension of conventional classification in which a single instance...
Multilabel classification is a challenging research problem in which each instance is assigned to a ...
Classification is the task of predicting the label(s) of future instances by learning and inferring ...
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...
In recent years, multi-label classification (MLC) has become an emerging research topic in big data ...
We develop a novel probabilistic ensemble framework for multi-label classification that is based on ...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
Multimedia data have, over recent years, been produced in many fields. They have important applicati...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
Multi-label classification is an extension of conventional classification in which a single instance...
This paper introduces a multi-label classification prob-lem to the field of human computation. The p...
Multi-label classification is an extension of conventional classification in which a single instance...
Multilabel classification is a challenging research problem in which each instance is assigned to a ...
Classification is the task of predicting the label(s) of future instances by learning and inferring ...
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...
In recent years, multi-label classification (MLC) has become an emerging research topic in big data ...
We develop a novel probabilistic ensemble framework for multi-label classification that is based on ...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
Multimedia data have, over recent years, been produced in many fields. They have important applicati...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
Multi-label learning is a specific supervised learning problem where each instance can be associated...
Multi-label classification is an extension of conventional classification in which a single instance...
This paper introduces a multi-label classification prob-lem to the field of human computation. The p...
Multi-label classification is an extension of conventional classification in which a single instance...