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MotifGP: Using multi-objective evolutionary computing for mining network expressions in DNA sequences

机译:MotifGP:使用多目标进化计算挖掘DNA序列中的网络表达

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This paper describes and evaluates a multi-objective strongly typed genetic programming algorithm for the discovery of network expressions in DNA sequences. Using 13 realistic data sets, we compare the results of our tool, MotifGP, to that of DREME, a state-of-the-art program. MotifGP outperforms DREME when the motifs to be sought are long, and the specificity is distributed over the length of the motif. For shorter motifs, the performance of MotifGP compares favourably with the state-of-the-art method. Finally, we discuss the advantages of multi-objective optimization in the context of this specific motif discovery problem.
机译:本文描述并评估了一种多目标强类型遗传编程算法,用于发现DNA序列中的网络表达。使用13个现实的数据集,我们将工具MotifGP的结果与最新程序DREME的结果进行了比较。当要寻找的基序很长时,MotifGP胜过DREME,并且特异性分布在基序的整个长度上。对于较短的图案,MotifGP的性能优于最新技术。最后,我们讨论了在这个特定的主题发现问题的背景下多目标优化的优势。

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