Multi-objective optimization has played a major role in solving problems where two or more conflicting objectives need to be simultaneously optimized. This paper presents a Multi-Objective Grammar-based Genetic Programming (MOGGP) system that automatically evolves complete rule induction algorithms, which in turn produce both accurate and compact rule models. The system was compared with a single ob-jective GGP and three other rule induction algorithms. In total, 20 UCI data sets were used to generate and test generic rule induction algorithms, which can be now ap-plied to any classification data set. Experiments showed that, in general, the proposed MOGGP finds rule induction algorithms with competitive predictive accuracies and more compa...
A new method for applying grammar based Genetic Programming to learn fuzzy rule based classifiers fr...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
This paper shows how linguistic classification knowledge can be extracted from numerical data for pa...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
Abstract. Research in the rule induction algorithm field produced many algorithms in the last 30 yea...
Summary. Rule induction is a data mining technique used to extract classification rules of the form ...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Abstract This paper presents a proposal for the extraction of association rules called G3PARM (Gram-...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
This paper proposes a genetic programming (GP) framework for two major data mining tasks, namely cla...
Abstract—The classification problem can be addressed by numerous techniques and algorithms which bel...
Data mining involves the non-trivial extraction of implicit, previously unknown, and potentially use...
This work proposes a novel approach for the automatic generation and tuning of complete Takagi-Sugen...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
A new method for applying grammar based Genetic Programming to learn fuzzy rule based classifiers fr...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
This paper shows how linguistic classification knowledge can be extracted from numerical data for pa...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
Abstract. Research in the rule induction algorithm field produced many algorithms in the last 30 yea...
Summary. Rule induction is a data mining technique used to extract classification rules of the form ...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Abstract This paper presents a proposal for the extraction of association rules called G3PARM (Gram-...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
This paper proposes a genetic programming (GP) framework for two major data mining tasks, namely cla...
Abstract—The classification problem can be addressed by numerous techniques and algorithms which bel...
Data mining involves the non-trivial extraction of implicit, previously unknown, and potentially use...
This work proposes a novel approach for the automatic generation and tuning of complete Takagi-Sugen...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
A new method for applying grammar based Genetic Programming to learn fuzzy rule based classifiers fr...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
This paper shows how linguistic classification knowledge can be extracted from numerical data for pa...