A Memetic genetic program for knowledge discovery
Abstract (Summary)
Local search algorithms have been proved to be effective in refining solutions that have been
found by other algorithms. Evolutionary algorithms, in particular global search algorithms,
have shown to be successful in producing approximate solutions for optimisation and
classification problems in acceptable computation times. A relatively new method, memetic
algorithms, uses local search to refine the approximate solutions produced by global search
algorithms. This thesis develops such a memetic algorithm. The global search algorithm used
as part of the new memetic algorithm is a genetic program that implements the building block
hypothesis by building simplistic decision trees representing valid solutions, and gradually
increases the complexity of the trees. The specific building block hypothesis implementation
is known as the building block approach to genetic programming, BGP. The effectiveness and
efficiency of the new memetic algorithm, which combines the BGP algorithm with a local
search algorithm, is demonstrated.
Bibliographical Information:
Advisor:
School:University of Pretoria/Universiteit van Pretoria
School Location:South Africa
Source Type:Master's Thesis
Keywords:memetics genetic algorithms
ISBN:
Date of Publication: