Being able to model correlations between labels is considered crucial in multi-label classification. Rule-based models enable to expose such dependencies, e.g., implications, subsumptions, or exclusions, in an interpretable and human-comprehensible manner. Albeit the number of possible label combinations increases exponentially with the number of available labels, it has been shown that rules with multiple labels in their heads, which are a natural form to model local label dependencies, can be induced efficiently by exploiting certain properties of rule evaluation measures and pruning the label search space accordingly. However, experiments have revealed that multi-label heads are unlikely to be learned by existing methods due to their res...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Abstract—Multi label classification is concerned with learning from a set of instances that are asso...
In multi-label learning, each training example is represented by a single instance (feature vector) ...
Exploiting dependencies between labels is considered to be crucial for multi-label classification. R...
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
We extend the multi-label classification setting with constraints on labels. This leads to two new m...
In multi-label learning, each training example is associated with a set of labels and the task is to...
In multi-label learning, an example is represented by a de-scriptive feature associated with several...
Multi-label classification is becoming increasingly ubiquitous, but not much attention has been paid...
In multi-label learning, each training example is associated with a set of labels and the task is to...
In multi-label learning, an example is represented by a descriptive feature associated with several ...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
An important problem in multi-label classification is to capture label patterns or underlying struct...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Abstract—Multi label classification is concerned with learning from a set of instances that are asso...
In multi-label learning, each training example is represented by a single instance (feature vector) ...
Exploiting dependencies between labels is considered to be crucial for multi-label classification. R...
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
We extend the multi-label classification setting with constraints on labels. This leads to two new m...
In multi-label learning, each training example is associated with a set of labels and the task is to...
In multi-label learning, an example is represented by a de-scriptive feature associated with several...
Multi-label classification is becoming increasingly ubiquitous, but not much attention has been paid...
In multi-label learning, each training example is associated with a set of labels and the task is to...
In multi-label learning, an example is represented by a descriptive feature associated with several ...
This paper presents a Pruned Sets method (PS) for multi-label classification. It is centred on the c...
An important problem in multi-label classification is to capture label patterns or underlying struct...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Abstract—Multi label classification is concerned with learning from a set of instances that are asso...
In multi-label learning, each training example is represented by a single instance (feature vector) ...