Recently, several authors have advocated the use of rule learning algorithms to model multi-label data, as rules are interpretable and can be comprehended, analyzed, or qualitatively evaluated by domain experts. Many rule learning algorithms employ a heuristic-guided search for rules that model regularities contained in the training data and it is commonly accepted that the choice of the heuristic has a significant impact on the predictive performance of the learner. Whereas the properties of rule learning heuristics have been studied in the realm of single-label classification, there is no such work taking into account the particularities of multi-label classification. This is surprising, as the quality of multi-label predictions is usuall...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
The primary goal of the research reported in this thesis is to identify what criteria are responsibl...
Rule-based classifiers are supervised learning techniques that are extensively used in various domai...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
The primary goal of the research reported in this paper is to identify what criteria are responsible...
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
Evaluation metrics for rule learning typically, in one way or another, trade off consistency and cov...
Being able to model correlations between labels is considered crucial in multi-label classification....
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
The goal of this paper is to investigate to what extent a rule learning heuristic can be learned fro...
The goal of this paper is to investigate to what extent a rule learning heuristic can be learned fro...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Abstract. The goal of this paper is to investigate to what extent a rule learning heuristic can be l...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
The primary goal of the research reported in this thesis is to identify what criteria are responsibl...
Rule-based classifiers are supervised learning techniques that are extensively used in various domai...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
The primary goal of the research reported in this paper is to identify what criteria are responsible...
Multi-label classification (MLC) is a supervised learning problem in which, contrary to standard mul...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
Evaluation metrics for rule learning typically, in one way or another, trade off consistency and cov...
Being able to model correlations between labels is considered crucial in multi-label classification....
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
The goal of this paper is to investigate to what extent a rule learning heuristic can be learned fro...
The goal of this paper is to investigate to what extent a rule learning heuristic can be learned fro...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Abstract. The goal of this paper is to investigate to what extent a rule learning heuristic can be l...
Feature Selection plays an important role in machine learning and data mining, and it is often appli...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
The primary goal of the research reported in this thesis is to identify what criteria are responsibl...
Rule-based classifiers are supervised learning techniques that are extensively used in various domai...