首页> 外文会议>Southeastern International Conference on Combinatorics, Graph Theory and Computing >IMPROVING A GREEDY DNA MOTIF SEARCH USING A MULTIPLE GENOMIC SELF-ADAPTATING GENETIC ALGORITHM
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IMPROVING A GREEDY DNA MOTIF SEARCH USING A MULTIPLE GENOMIC SELF-ADAPTATING GENETIC ALGORITHM

机译:使用多种基因组自适应遗传算法改善贪婪的DNA主题搜索

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We consider the problem of combining a greedy motif search algorithm with a self-adapting genetic algorithm that employs multiple genomic representations in order to find high scoring substring patterns of size k in a set of t DNA sequences of size n. This improves the results of a stand-alone greedy motif search. The encoding schemes used insure feasibility after performing the operations of crossover and mutation and also ensure the feasibility of the initial randomly generated population. The GA's applied in solving this problem employ non-locality or locality representations when appropriate, that is, the GA's adapt to their current search needs. This makes the GA's more efficient.
机译:我们考虑将贪婪基序搜索算法与自适应遗传算法相结合的问题,该遗传算法采用多种基因组表示,以便在大小n的一组T DNA序列中找到大小k的高分素曲线图案。这提高了独立贪婪主题搜索的结果。编码方案在执行交叉和突变的操作后使用了保险可行性,并确保了初始随机生成的群体的可行性。当适当时,GA在解决此问题时应用了非地方性或地区表示,即GA的适应他们当前的搜索需求。这使得GA更高效。

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