Multi-objective metaheuristics have previously been applied to partial classification, where the objective is to produce simple, easy to understand rules that describe subsets of a class of interest. While this provides a useful aid in descriptive data mining, it is difficult to see how the rules produced can be combined usefully to make a predictive classifier. This paper describes how, by using a more complex representation of the rules, it is possible to produce effective classifiers for two class problems. Furthermore, through the use of multi-objective genetic programming, the user can be provided with a selection of classifiers providing different trade-offs between the misclassification costs and the overall model complexity
Abstract—Classification is one of the most researched questions in machine learning and data mining....
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Classification is one of the most researchable ideas in machine learning and data mining. A wide ran...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
In this paper a multiclass classification problem solving technique based on genetic programming is ...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
Abstract. A new genetic programming based approach to classification problems is proposed. Different...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
3noThis work introduces a new technique for features construction in classification problems by mean...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
Summary. Rule induction is a data mining technique used to extract classification rules of the form ...
Abstract—Classification is one of the most researched questions in machine learning and data mining....
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Classification is one of the most researchable ideas in machine learning and data mining. A wide ran...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
In this paper a multiclass classification problem solving technique based on genetic programming is ...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
Abstract. A new genetic programming based approach to classification problems is proposed. Different...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
3noThis work introduces a new technique for features construction in classification problems by mean...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
Summary. Rule induction is a data mining technique used to extract classification rules of the form ...
Abstract—Classification is one of the most researched questions in machine learning and data mining....
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Classification is one of the most researchable ideas in machine learning and data mining. A wide ran...