Computational Complexity Analysis of Simple Genetic Programming On Two Problems Modeling Isolated Program Semantics
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- @Misc{Durrett:2010:ccaGP2pmips,
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author = "Greg Durrett and Frank Neumann and Una-May O'Reilly",
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title = "Computational Complexity Analysis of Simple Genetic
Programming On Two Problems Modeling Isolated Program
Semantics",
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year = "2010",
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month = "27 " # jul,
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note = "arXiv:1007.4636v1",
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keywords = "genetic algorithms, genetic programming, Computational
Complexity, Data Structures and Algorithms",
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URL = "http://arxiv.org/pdf/1007.4636v1",
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size = "26 pages",
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abstract = "Analysing the computational complexity of evolutionary
algorithms for binary search spaces has significantly
increased their theoretical understanding. With this
paper, we start the computational complexity analysis
of genetic programming. We set up several simplified
genetic programming algorithms and analyze them on two
separable model problems, ORDER and MAJORITY, each of
which captures an important facet of typical genetic
programming problems. Both analyses give first rigorous
insights on aspects of genetic programming design,
highlighting in particular the impact of accepting or
rejecting neutral moves and the importance of a local
mutation operator.",
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notes = "See \cite{Durrett:2011:foga}",
- }
Genetic Programming entries for
Greg Durrett
Frank Neumann
Una-May O'Reilly
Citations