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A SEQUENTIAL MONTE CARLO METHOD FOR MOTIF DISCOVERY

机译:序列蒙特卡洛方法用于Motif发现

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We propose a sequential Monte Carlo (SMC)-based motif discovery algorithm that can efficiently detect motifs in datasets containing a large number of sequences. The statistical distribution of the motifs and the positions of the motifs within the sequences are estimated by the SMC algorithm. The proposed SMC motif discovery technique can locate motifs under a number of scenarios, including the single-block model, two-block model with unknown gap length, motifs of unknown lengths, motifs with unknown abundance, and sequences with multiple unique motifs. The accuracy of the SMC motif discovery algorithm is shown to be superior to that of the existing methods based on MCMC or EM algorithms. Furthermore, it is shown that the proposed method can be used to improve the results of existing motif discovery algorithms by using their results as the priors for the SMC algorithm.
机译:我们提出了一种基于顺序蒙特卡洛(SMC)的基序发现算法,该算法可以有效地检测包含大量序列的数据集中的基序。通过SMC算法估计基序的统计分布和基序在序列中的位置。所提出的SMC主题发现技术可以在许多情况下定位主题,包括单块模型,具有未知间隙长度的两块模型,未知长度的主题,具有未知丰度的主题以及具有多个独特主题的序列。结果表明,SMC主题发现算法的准确性优于基于MCMC或EM算法的现有方法。此外,表明所提出的方法可以通过将它们的结果用作SMC算法的先验来用于改进现有的主题发现算法的结果。

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