Sciweavers

EPS
1997
Springer

Performance-Enhanced Genetic Programming

14 years 4 months ago
Performance-Enhanced Genetic Programming
Genetic Programming is increasing in popularity as the basis for a wide range of learning algorithms. However, the technique has to date only been successfully applied to modest tasks because of the performance overheads of evolving a large number of data structures, many of which do not correspond to a valid program. We address this problem directly and demonstrate how the evolutionary process can be achieved with much greater efficiency through the use of a formally-based representation and strong typing. We report initial experimental results which demonstrate that our technique exhibits significantly better performance than previous work.
Chris Clack, Tina Yu
Added 07 Aug 2010
Updated 07 Aug 2010
Type Conference
Year 1997
Where EPS
Authors Chris Clack, Tina Yu
Comments (0)