Classifier systems and genetic algorithms
Artificial Intelligence
Data mining: practical machine learning tools and techniques with Java implementations
Data mining: practical machine learning tools and techniques with Java implementations
Genetic Algorithms in Search, Optimization and Machine Learning
Genetic Algorithms in Search, Optimization and Machine Learning
Iterative Computer Algorithms with Applications in Engineering: Solving Combinatorial Optimization Problems
Explicit Parallelism of Genetic Algorithms through Population Structures
PPSN I Proceedings of the 1st Workshop on Parallel Problem Solving from Nature
Optimization Using Distributed Genetic Algorithms
PPSN I Proceedings of the 1st Workshop on Parallel Problem Solving from Nature
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A number of parameters must be specified for a data-mining algorithm. Default values of these parameters are given and generally accepted as 'good' estimates for any data set. However, data mining models are known to be data dependent, and so are for their parameters. Default values may be good estimates, but they are often not the best parameter values for a particular data set. A tuned set of parameter values is able to produce a data-mining model of better classification and higher prediction accuracy. However parameter search is known to be expensive. This paper investigates GA-based heuristic techniques in a case study of optimizing parameters of back-propagation neural network classifier. Our experiments show that GA-based optimization technique is capable of finding a better set of parameter values than random search. In addition, this paper extends the island-model of Parallel GA (PGA) and proposes a VC-PGA, which communicates globally fittest individuals to local population with reduced communication overhead. Our result shows that GA-based parallel heuristic optimization technique provides a solution to large parametric optimization problems.