Various algorithms are capable of learning a set of classification rules from a number of observations with their corresponding class labels. Whereas the obtained rule set is usually evaluated by measuring its accuracy on a number of unseen examples, there are several other evaluation criteria, such as comprehensibility and consistency, that are often overlooked. In this paper we focus on the aspect of consistency: if a rule learner is applied several times on the same data set, will it provide rule sets that are similar over the different runs? A new measure is proposed and various examples show how this new measure can be used to decide between different algorithms and rule sets or to find out whether the rules in a knowledge base need to...
Abstract. In concept learning and data mining tasks, the learner is typically faced with a choice of...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
Abstract. This paper introduces Deft, a new multitask learning approach for rule learning algorithms...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
Abstract. Numerous measures are used for performance evaluation in machine learning. In predictive k...
A rule-based system is a system based on the set of rules used to make inference knowledge. The syst...
During knowledge acquisition multiple alternative potential rules all appear equally credible. This ...
Performance of Machine Learning models heavily depends on the quality of the training dataset. Among...
One of the major goals of most early concept learners was to find hypotheses that were perfectly con...
Editor: Abstract. The use of feature selection can improve accuracy, efficiency, applicability and u...
. We claim that knowledge can be "naturally" inconsistent in some domains such as those i...
This paper introduces DEFT, a new multitask learning approach for rule learning algorithms. Like oth...
Knowledge acquisition techniques have been well researched in the data mining community. Such techni...
Abstract. In concept learning and data mining tasks, the learner is typically faced with a choice of...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
Abstract. This paper introduces Deft, a new multitask learning approach for rule learning algorithms...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Symbolic inductive learning systems that induce concept descriptions from examples are valuable tool...
Abstract. Numerous measures are used for performance evaluation in machine learning. In predictive k...
A rule-based system is a system based on the set of rules used to make inference knowledge. The syst...
During knowledge acquisition multiple alternative potential rules all appear equally credible. This ...
Performance of Machine Learning models heavily depends on the quality of the training dataset. Among...
One of the major goals of most early concept learners was to find hypotheses that were perfectly con...
Editor: Abstract. The use of feature selection can improve accuracy, efficiency, applicability and u...
. We claim that knowledge can be "naturally" inconsistent in some domains such as those i...
This paper introduces DEFT, a new multitask learning approach for rule learning algorithms. Like oth...
Knowledge acquisition techniques have been well researched in the data mining community. Such techni...
Abstract. In concept learning and data mining tasks, the learner is typically faced with a choice of...
Separate-and-conquer or covering rule learning algorithms may be viewed as a technique for using loc...
Abstract. This paper introduces Deft, a new multitask learning approach for rule learning algorithms...