Multi-class problem is the class of problems having more than one classes in the data set. Bayesian Network (BN) is a well-known algorithm handling the multi-class problem and is applied to different areas. But BN cannot handle continuous values. In contrast, Genetic Programming (GP) can handle continuous values and produces classification rules. However, GP is possible to produce cyclic rules representing tautologic, in which are useless for inference and expert systems. Co-evolutionary Rule-chaining Genetic Programming (CRGP) is the first variant of GP handling the multi-class problem and produces acyclic classification rules [16]. It employs backward chaining inference to carry out classification based on the acquired acyclic rule set. I...
Recent experiments with a genetic-based encoding schema are presented as a potentially useful tool i...
Abstract. This paper formally introduces Recurrent Cartesian Genetic Programming (RCGP), an extensio...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
Data mining algorithms discover knowledge from data. The knowledge are commonly expressed as depende...
One objective of data mining is to discover parent-child relationships among a set of variables in t...
Classification rule is a useful model in data mining. Given variable values, rules classify data ite...
Abstract. We present the Acyclic Bayesian Net Generator, a new approach to learn the structure of a ...
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 ...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
Abstract. This paper proposes a new framework, referred to as Recur-rent Bayesian Genetic Programmin...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
This paper presents an evolutionary approach and an incremental approach to find learning rules of s...
Recent experiments with a genetic-based encoding schema are presented as a potentially useful tool i...
Abstract. This paper formally introduces Recurrent Cartesian Genetic Programming (RCGP), an extensio...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
Data mining algorithms discover knowledge from data. The knowledge are commonly expressed as depende...
One objective of data mining is to discover parent-child relationships among a set of variables in t...
Classification rule is a useful model in data mining. Given variable values, rules classify data ite...
Abstract. We present the Acyclic Bayesian Net Generator, a new approach to learn the structure of a ...
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 ...
Multi-objective optimization has played a major role in solving problems where two or more conflicti...
This paper explores the feasibility of applying genetic programming (GP) to multicategory pattern cl...
Abstract. This paper proposes a new framework, referred to as Recur-rent Bayesian Genetic Programmin...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
This paper presents an evolutionary approach and an incremental approach to find learning rules of s...
Recent experiments with a genetic-based encoding schema are presented as a potentially useful tool i...
Abstract. This paper formally introduces Recurrent Cartesian Genetic Programming (RCGP), an extensio...
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...