Developing learning algorithms for multilabel classification problems, when the goal is to maximizing the micro-averaged F measure, is a difficult problem for which no solution was known so far. In this paper we provide an exact solution for the case when the popular binary relevance approach is used for designing a multilabel classifier. We prove that the empirical maximum of the micro-averaged F measure can be attained by iteratively retraining class-related binary classifiers whose learning algorithm is capable of maximizing a modified version of the F measure of a two-class problem. We apply our optimization strategy to an existing formulation of support vector machine classifiers tailored to performance measures like F, and evaluate it...
Multiclass Multilabel Perceptrons (MMP) are an efficient incremental algorithm for training a team o...
The problem of multi-instance multi-label learning (MIML) requires a bag of instances to be assigned...
While it is known that multiple classifier systems can be effective also in multi-label problems, on...
Developing learning algorithms for multilabel classification problems, when the goal is to maximizin...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
Multilabel classification (ML) aims to assign a set of labels to an instance. This generalization of...
The goal of multilabel (ML) classi cation is to induce models able to tag objects with the labels th...
When a multi-label classifier outputs a real-valued score for each class, a well known design strate...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
This paper investigates the properties of the widely-utilized F1 metric as used to evaluate the perf...
<p> Multilabel learning has a wide range of potential applications in reality. It attracts a great ...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
Multiclass Multilabel Perceptrons (MMP) are an efficient incremental algorithm for training a team o...
The problem of multi-instance multi-label learning (MIML) requires a bag of instances to be assigned...
While it is known that multiple classifier systems can be effective also in multi-label problems, on...
Developing learning algorithms for multilabel classification problems, when the goal is to maximizin...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
Multilabel classification (ML) aims to assign a set of labels to an instance. This generalization of...
The goal of multilabel (ML) classi cation is to induce models able to tag objects with the labels th...
When a multi-label classifier outputs a real-valued score for each class, a well known design strate...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
This paper investigates the properties of the widely-utilized F1 metric as used to evaluate the perf...
<p> Multilabel learning has a wide range of potential applications in reality. It attracts a great ...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Many multi-label classifiers provide a real-valued score for each class. A well known design approac...
Multi-label classification problems usually occur in tasks related to information retrieval, like te...
Multiclass Multilabel Perceptrons (MMP) are an efficient incremental algorithm for training a team o...
The problem of multi-instance multi-label learning (MIML) requires a bag of instances to be assigned...
While it is known that multiple classifier systems can be effective also in multi-label problems, on...