首页> 外文会议>Intelligent Systems Design and Applications, 2009. ISDA '09 >Optimizing Multiple Sequence Alignment by Improving Mutation Operators of a Genetic Algorithm
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Optimizing Multiple Sequence Alignment by Improving Mutation Operators of a Genetic Algorithm

机译:通过改进遗传算法的变异算子来优化多序列比对

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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.
机译:要搜索一组序列的最佳比对并不是一项容易的任务,主要是因为所涉及的搜索空间的大小和复杂性。遗传算法易于优化大型和复杂搜索空间中的一般组合问题。为此,我们设计了一种遗传算法AlineaGA,它通过局部搜索优化引入了新的变异算子。现在,我们将这些新运算符带给该领域的贡献,将它们与文献中不使用本地搜索机制的类似版本进行比较。为此,我们在八个BAliBASE比对中测试了突变算子的不同配置,得出了有关种群进化和最终结果质量的结论。我们得出的结论是,新算子代表了这一领域的进步,并且它们与不使用优化策略的变异算子组合使用可以帮助算法达到高质量的解决方案。

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