Classification rule is a useful model in data mining. Given variable values, rules classify data items into different classes. Different rule learning algorithms are proposed, like Genetic Algorithm (GA) and Genetic Programming (GP). Rules can also be extracted from Bayesian Network (BN) and decision trees. However, all of them have disadvantages and may fail to get the best results. Both of GA and GP cannot handle cooperation among rules and thus, the learnt rules are likely to have many overlappings, i.e. more than one rules classify the same data items and different rules have different predictions. The conflicts among the rules reduce their understandability and increase their usage difficulty for expert systems. In contrast, rules extr...
This paper describes a novel data mining approach that employs evolutionary programming to discover ...
In this paper, we present a multi-stage genetic learning process for obtaining linguistic Fuzzy Rule...
In the intersection of pattern recognition, machine learning, and evolutionary computation is a new ...
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...
Bayesian Network (BN) is a powerful network model, which represents a set of variables in the domain...
Multi-class problem is the class of problems having more than one classes in the data set. Bayesian ...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Abstract--- Pattern set mining troubled with discovery a set of NP interrelated patterns in constrai...
Data mining has become an important research topic. The increasing use of computer results in an exp...
In this paper, we introduce ontology and Genetic Network Programming into generalized association ru...
This paper describes a novel data mining algorithm that employs cooperative coevolution and a hybrid...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
This paper describes a novel data mining approach that employs evolutionary programming to discover ...
In this paper, we present a multi-stage genetic learning process for obtaining linguistic Fuzzy Rule...
In the intersection of pattern recognition, machine learning, and evolutionary computation is a new ...
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...
Bayesian Network (BN) is a powerful network model, which represents a set of variables in the domain...
Multi-class problem is the class of problems having more than one classes in the data set. Bayesian ...
A novel Genetic Programming (GP) paradigm called Co-evolutionary Rule-Chaining Genetic Programming (...
Abstract: Genetic Programming (GP) has been emerged as a promising approach to deal with classificat...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
Abstract--- Pattern set mining troubled with discovery a set of NP interrelated patterns in constrai...
Data mining has become an important research topic. The increasing use of computer results in an exp...
In this paper, we introduce ontology and Genetic Network Programming into generalized association ru...
This paper describes a novel data mining algorithm that employs cooperative coevolution and a hybrid...
Rule induction is a data mining technique used to extract classification rules of the form IF (condi...
This paper describes a novel data mining approach that employs evolutionary programming to discover ...
In this paper, we present a multi-stage genetic learning process for obtaining linguistic Fuzzy Rule...
In the intersection of pattern recognition, machine learning, and evolutionary computation is a new ...