Optimizing Multiple Sequence Alignment by Improving Mutation Operators of a Genetic Algorithm

Searching for the best possible alignment for a set of sequences is not an easy task, mainly because of the size and complexity of the search space involved. Genetic algorithms are predisposed for optimizing general combinatorial problems in large and complex search spaces. We have designed a geneti...

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Hauptverfasser: da Silva, F.J.M., Sanchez Perez, J.M., Gomez Pulido, J.A., Rodriguez, M.A.V.
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:Searching for the best possible alignment for a set of sequences is not an easy task, mainly because of the size and complexity of the search space involved. Genetic algorithms are predisposed for optimizing general combinatorial problems in large and complex search spaces. We have designed a genetic algorithm for this purpose, AlineaGA, which introduced new mutation operators with local search optimization. Now we present the contribution that these new operators bring to this field, comparing them with similar versions present in the literature that do not use local search mechanisms. For this purpose, we have tested different configurations of mutation operators in eight BAliBASE alignments, taking conclusions regarding population evolution and quality of the final results. We conclude that the new operators represent an improvement in this area, and that their combined use with mutation operators that do not use optimization strategies, can help the algorithm to reach quality solutions.
ISSN:2164-7143
2164-7151
DOI:10.1109/ISDA.2009.106