Epigenetic programming: Genetic programming incorporating epigenetic learning through modification of histones
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- @Article{Tanev:2008:IS,
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author = "Ivan Tanev and Kikuo Yuta",
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title = "Epigenetic programming: Genetic programming
incorporating epigenetic learning through modification
of histones",
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journal = "Information Sciences",
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year = "2008",
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volume = "178",
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number = "23",
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pages = "4469--4481",
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month = "1 " # dec,
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note = "Special Section: Genetic and Evolutionary Computing",
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keywords = "genetic algorithms, genetic programming, epigenesis,
learning histone code",
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ISSN = "0020-0255",
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DOI = "doi:10.1016/j.ins.2008.07.027",
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size = "13 pages",
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abstract = "We present the results of our work in simulating the
recently discovered findings in molecular biology
regarding the significant role which histones play in
regulating the gene expression in eukaryotes. Extending
the notion of inheritable genotype in evolutionary
computation from the commonly considered model of DNA
to chromatin (DNA and histones), we present epigenetic
programming as an approach, incorporating an explicitly
controlled gene expression through modification of
histones in strongly-typed genetic programming (STGP).
We propose a double cell representation of the
simulated individuals, comprising somatic cell and germ
cell, both represented by their respective chromatin
structures. Following biologically plausible concepts,
we regard the plastic phenotype of the somatic cell,
achieved via controlled gene expression owing to
modifications to histones (epigenetic learning, EL) as
relevant for fitness evaluation, while the genotype of
the germ cell corresponds to the phylogenesis of the
individuals. The beneficial effect of EL on the
performance characteristics of STGP is verified on
evolution of social behaviour of a team of predator
agents in the predator prey pursuit problem.
Empirically obtained performance evaluation results
indicate that EL contributes to about 2-fold
improvement of computational effort of STGP. We trace
the cause for that to the cumulative effect of
polyphenism and epigenetic stability, both contributed
by EL. The former allows for phenotypic diversity of
genotypically similar individuals, while the latter
robustly preserves the individuals from the destructive
effects of crossover by silencing certain genotypic
combinations and explicitly activating them only when
they are most likely to be expressed in corresponding
beneficial phenotypic traits.",
- }
Genetic Programming entries for
Ivan T Tanev
Kikuo Yuta
Citations