Epigenetically Inspired Modification of Genetic Algorithm and His Efficiency on Biological Sequence Alignment
In this paper the modification of genetic algorithm inspired by the epigenetic process is presented. The results of the efficiency of the proposed modified algorithm are compared with standard genetic algorithm and a tool which does not use evolutionary processes.
KeywordsGenetic algorithm Epigenetics Sequence alignment
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