Probabilistic Model Building and Competent Genetic Programming

@inproceedings{Sastry2003ProbabilisticMB,
  title={Probabilistic Model Building and Competent Genetic Programming},
  author={K. Sastry and D. Goldberg},
  year={2003}
}
  • K. Sastry, D. Goldberg
  • Published 2003
  • Mathematics
  • This paper describes probabilistic model building genetic programming (PM-BGP) developed based on the extended compact genetic algorithm (eCGA). Unlike traditional genetic programming, which use fixed recombination operators, the proposed PMBGA adapts linkages. The proposed algorithms, called the extended compact genetic programming (eCGP) adaptively identifies and exchanges non-overlapping building blocks by constructing and sampling probabilistic models of promising solutions. The results… CONTINUE READING
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