Previous research produced a multi-objective metaheuristic for partial classification, where rule dominance is determined through the comparison of rules based on just two objectives: rule confidence and coverage. The user is presented with a set of descriptions of the class of interest from which he may select a subset. This paper presents two enhancements to this algorithm, describing how the use of modified dominance relations may increase the diversity of rules presented to the user and how clustering techniques may be used to aid in the presentation of the potentially large sets of rules generated
In this paper we explore the application of powerful optimisers known as metaheuristic algorithms to...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
Abstract. An important task of knowledge discovery deals with dis-covering association rules. This v...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Metaheuristic algorithms have been used successfully in a number of data mining contexts and specifi...
In this paper, we present an application of multi-objective metaheuristics to the field of data mini...
Previous research has resulted in a number of different algorithms for rule discovery. Two approache...
The most successful multi-objective metaheuristics, such as NSGA II and SPEA 2, usually apply a form...
This paper describes the application of a multiobjective GRASP to rule selection, where previously g...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
International audienceLearning the parameters of a Majority Rule Sorting model (MR-Sort) through lin...
International audienceA large number of rule interestingness measures have been used as objectives i...
Abstract—Most Machine Learning systems target into induc-ing classifiers with optimal coverage and p...
In this paper we explore the application of powerful optimisers known as metaheuristic algorithms to...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
Abstract. An important task of knowledge discovery deals with dis-covering association rules. This v...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Metaheuristic algorithms have been used successfully in a number of data mining contexts and specifi...
In this paper, we present an application of multi-objective metaheuristics to the field of data mini...
Previous research has resulted in a number of different algorithms for rule discovery. Two approache...
The most successful multi-objective metaheuristics, such as NSGA II and SPEA 2, usually apply a form...
This paper describes the application of a multiobjective GRASP to rule selection, where previously g...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
International audienceLearning the parameters of a Majority Rule Sorting model (MR-Sort) through lin...
International audienceA large number of rule interestingness measures have been used as objectives i...
Abstract—Most Machine Learning systems target into induc-ing classifiers with optimal coverage and p...
In this paper we explore the application of powerful optimisers known as metaheuristic algorithms to...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
Abstract. An important task of knowledge discovery deals with dis-covering association rules. This v...