AbstractThis paper presents a distributed genetic algorithm for the discovery of classification rules. Population is contained in the form of interconnected demes. The local selection and reproduction mechanism is used to evolve the species within demes, and diversity is enhanced by migrating rules among some of the selected demes. Subsumption operator has been finally applied to reduce the complexity of the rule set discovered. The effectiveness of the proposed distributed genetic algorithm for discovering classification rules is evaluated by comparing the results with traditional crowding GA on 10 datasets from the UCI and KEEL repository. The results confirm that the distributed GA discover classification rules with significantly higher ...
A major problem in the use of genetic algorithms is premature convergence, a premature stagnation o...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Genetic fuzzy rule selection is a two-phase classification rule mining method. First a large number ...
In this paper we evaluates the effectiveness of three different distributed genetic algorithms (DGAs...
This paper discusses the effect of randomization of migration rate in distributed genetic algorithms...
An important issue in data mining is scalability with respect to the size of the dataset being min...
Presents a classification algorithm based on genetic algorithms (GAs) that discovers comprehensible ...
Genetic Algorithm is a widely used approach in predictive data mining where data mining output can b...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
Data mining involves the process of extracting nontrivial knowledge or hidden patterns from large da...
Analysing large-scale data brings promises of new levels of scientific discovery and economic value....
The main goal of data mining is to extract accurate, comprehensible and interesting knowledge from d...
Data mining involves nontrivial process of extracting knowledge or patterns from large databases. Ge...
A major problem in the use of genetic algorithms is premature convergence, a premature stagnation o...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
Genetic fuzzy rule selection is a two-phase classification rule mining method. First a large number ...
In this paper we evaluates the effectiveness of three different distributed genetic algorithms (DGAs...
This paper discusses the effect of randomization of migration rate in distributed genetic algorithms...
An important issue in data mining is scalability with respect to the size of the dataset being min...
Presents a classification algorithm based on genetic algorithms (GAs) that discovers comprehensible ...
Genetic Algorithm is a widely used approach in predictive data mining where data mining output can b...
migration strategy; Abstract. Genetic Algorithm (GA) is a powe rful global optimization search algo ...
Data mining involves the process of extracting nontrivial knowledge or hidden patterns from large da...
Analysing large-scale data brings promises of new levels of scientific discovery and economic value....
The main goal of data mining is to extract accurate, comprehensible and interesting knowledge from d...
Data mining involves nontrivial process of extracting knowledge or patterns from large databases. Ge...
A major problem in the use of genetic algorithms is premature convergence, a premature stagnation o...
Genetic algorithm behavior is determined by the exploration/exploitation balance kept throughout the...
Classification rule mining from huge amount of data is a challenging issue in data mining. Classific...