Exploiting dependencies between labels is considered to be crucial for multi-label classification. Rules are able to expose label dependencies such as implications, subsumptions or exclusions in a human-comprehensible and interpretable manner. However, the induction of rules with multiple labels in the head is particularly challenging, as the number of label combinations which must be taken into account for each rule grows exponentially with the number of available labels. To overcome this limitation, algorithms for exhaustive rule mining typically use properties such as anti-monotonicity or decomposability in order to prune the search space. In the present paper, we examine whether commonly used multi-label evaluation metrics satisfy these...
The multi-label classification task has been widely used to solve problems where each of the instanc...
In multi-label classification, a large number of evaluation metrics exist, for example Hamming loss,...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Exploiting dependencies between labels is considered to be crucial for multi-label classification. R...
Being able to model correlations between labels is considered crucial in multi-label classification....
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
We extend the multi-label classification setting with constraints on labels. This leads to two new m...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Most recent work has been focused on associative classification technique. Most research work of cla...
The widely known binary relevance method for multi-label classification, which considers each label ...
Multi-label classification is becoming increasingly ubiquitous, but not much attention has been paid...
Abstract—Multi label classification is concerned with learning from a set of instances that are asso...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
Existing multi-label learning approaches assume all labels in a dataset are of the same importance. ...
The multi-label classification task has been widely used to solve problems where each of the instanc...
In multi-label classification, a large number of evaluation metrics exist, for example Hamming loss,...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Exploiting dependencies between labels is considered to be crucial for multi-label classification. R...
Being able to model correlations between labels is considered crucial in multi-label classification....
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
We extend the multi-label classification setting with constraints on labels. This leads to two new m...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Most recent work has been focused on associative classification technique. Most research work of cla...
The widely known binary relevance method for multi-label classification, which considers each label ...
Multi-label classification is becoming increasingly ubiquitous, but not much attention has been paid...
Abstract—Multi label classification is concerned with learning from a set of instances that are asso...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
Existing multi-label learning approaches assume all labels in a dataset are of the same importance. ...
The multi-label classification task has been widely used to solve problems where each of the instanc...
In multi-label classification, a large number of evaluation metrics exist, for example Hamming loss,...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...