In conventional classification problems, each instance of a dataset is associated with just one among two or more classes. However, there are more complex classification problems where instances can be simultaneously classified into classes belonging to two or more paths of a hierarchy. Such a hierarchy can be structured as a tree or a directed acyclic graph. These problems are known in the machine learning literature as hierarchical multi-label classification (HMC) problems. In this\ud Thesis, two methods for hierarchical multi-label classification are proposed and investigated. The first one associates a Multi-Layer Perceptron (MLP) to each hierarchical level, being each MLP responsible for the predictions in its associated level. The met...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Traditional approach to automated classification assumes that each object should be assigned to only...
In conventional classification problems, each instance of a dataset is associated with just one amon...
Em problemas convencionais de classificação, cada exemplo de um conjunto de dados é associado a apen...
Em problemas convencionais de classificação, cada exemplo de um conjunto de dados é associado a apen...
Hierarchical Multi-label Classification (HMC) is a classification task where classes are organized i...
We present an algorithm for hierarchical multi-label classifi- cation (HMC) in a network context. I...
In recent years, multi-label classification (MLC) has become an emerging research topic in big data ...
We present an algorithm for hierarchical multi-label classifi- cation (HMC) in a network context. I...
Hierarchical multi-label classification (HMC) is a challenging classification task extending standar...
Data classification is one of the most important topics in machine learning (ML) and aims to automa...
Hierarchical multi-label classification is a complex classification task where the classes involved ...
Hierarchical multilabel classification (HMC) is an extension of binary classification where an insta...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Traditional approach to automated classification assumes that each object should be assigned to only...
In conventional classification problems, each instance of a dataset is associated with just one amon...
Em problemas convencionais de classificação, cada exemplo de um conjunto de dados é associado a apen...
Em problemas convencionais de classificação, cada exemplo de um conjunto de dados é associado a apen...
Hierarchical Multi-label Classification (HMC) is a classification task where classes are organized i...
We present an algorithm for hierarchical multi-label classifi- cation (HMC) in a network context. I...
In recent years, multi-label classification (MLC) has become an emerging research topic in big data ...
We present an algorithm for hierarchical multi-label classifi- cation (HMC) in a network context. I...
Hierarchical multi-label classification (HMC) is a challenging classification task extending standar...
Data classification is one of the most important topics in machine learning (ML) and aims to automa...
Hierarchical multi-label classification is a complex classification task where the classes involved ...
Hierarchical multilabel classification (HMC) is an extension of binary classification where an insta...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Hierarchical multilabel classification (HMC) is a variant of classification where instances may belo...
Traditional approach to automated classification assumes that each object should be assigned to only...