AbstractClassification rule mining is the most sought out by users since they represent highly comprehensible form of knowledge. The rules are evaluated based on objective and subjective metrics. The user must be able to specify the properties of the rules. The rules discovered must have some of these properties to render them useful. These properties may be conflicting. Hence discovery of rules with specific properties is a multi objective optimization problem. Cultural Algorithm (CA) which derives from social structures, and which incorporates evolutionary systems and agents, and uses five knowledge sources (KS's) for the evolution process better suits the need for solving multi objective optimization problem. In the current study a cultu...
In this paper, we propose the use of a cultural algorithm combined with evolutionary programming to ...
Summary. In this chapter, we discuss the application of evolutionary multiob-jective optimization (E...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
AbstractClassification rule mining is the most sought out by users since they represent highly compr...
Decomposition is used to solve optimization problems by introducing many simple scalar optimization ...
Evolutionary Algorithms (EAs) are meta-heuristic algorithms used for optimization of complex problem...
Cultural Algorithm (CA) is one of the Evolutionary Algorithms (EAs) which de- rives from the cultura...
Optimization problems is a class of problems where the goal is to make a system as effective as poss...
Abstract—Most Machine Learning systems target into induc-ing classifiers with optimal coverage and p...
Population evolution algorithms such as Cultural Algorithms (CA) enable a global repository known as...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
AbstractThe course of socio-cultural transition can neither be aimless nor arbitrary, instead it req...
This is a study on the effects of multilevel selection (MLS) theory in optimizing numerical function...
Copyright © 2014 Carolina Lagos et al.This is an open access article distributed under the Creative ...
The first part of this paper served as a comprehensive survey of data mining methods that have been ...
In this paper, we propose the use of a cultural algorithm combined with evolutionary programming to ...
Summary. In this chapter, we discuss the application of evolutionary multiob-jective optimization (E...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
AbstractClassification rule mining is the most sought out by users since they represent highly compr...
Decomposition is used to solve optimization problems by introducing many simple scalar optimization ...
Evolutionary Algorithms (EAs) are meta-heuristic algorithms used for optimization of complex problem...
Cultural Algorithm (CA) is one of the Evolutionary Algorithms (EAs) which de- rives from the cultura...
Optimization problems is a class of problems where the goal is to make a system as effective as poss...
Abstract—Most Machine Learning systems target into induc-ing classifiers with optimal coverage and p...
Population evolution algorithms such as Cultural Algorithms (CA) enable a global repository known as...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
AbstractThe course of socio-cultural transition can neither be aimless nor arbitrary, instead it req...
This is a study on the effects of multilevel selection (MLS) theory in optimizing numerical function...
Copyright © 2014 Carolina Lagos et al.This is an open access article distributed under the Creative ...
The first part of this paper served as a comprehensive survey of data mining methods that have been ...
In this paper, we propose the use of a cultural algorithm combined with evolutionary programming to ...
Summary. In this chapter, we discuss the application of evolutionary multiob-jective optimization (E...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...