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首页> 外文期刊>International journal of data mining and bioinformatics >Randomised sequential and parallel algorithms for efficient quorum planted motif search
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Randomised sequential and parallel algorithms for efficient quorum planted motif search

机译:有效Quorum种植主题搜索随机顺序和并行算法

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摘要

Motifs are crucial patterns in biological sequences that have numerous applications. Motif search is an important step in obtaining meaningful patterns from biological data. However, most of the existing algorithms are deterministic and the role of randomisation in this area is still unexploited. This paper focuses on (l, d)-motif model, which is also known as Planted Motif Search (PMS) and proposes an efficient randomised algorithm, named qPMS10, to solve PMS. We utilise the most efficient PMS solver until now, named qPMS9, as a subroutine. We analyse the time complexity of both algorithms and provide a performance comparison of qPMS10 with qPMS9 on standard benchmark datasets. In addition, we offer a parallel implementation of qPMS10 and run tests using up to four processors. Both theoretical and empirical analyses demonstrate that our randomised algorithm outperforms the existing algorithms for solving PMS.
机译:图案是生物序列中具有许多应用的重要模式。 图案搜索是从生物数据获得有意义模式的重要一步。 然而,大多数现有算法是确定性的,并且该区域中随机化的作用仍然是未爆发的。 本文侧重于(L,D)-MOTIF模型,该模型也称为种植的图案搜索(PMS),并提出了一种名为QPMS10的有效随机算法来解决PMS。 我们以前利用最有效的PMS解算器,命名为QPMS9,作为子程序。 我们分析了两种算法的时间复杂性,并在标准基准数据集中提供QPMS10的QPMS10的性能比较。 此外,我们还提供QPMS10的并行实现,并使用最多四个处理器运行测试。 理论和经验分析都表明,我们的随机算法优于现有的求解PMS的现有算法。

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