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DMcompress: dynamic Markov models for bacterial genome compression

机译:DMCompress:细菌基因组压缩的动态马尔可夫模型

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Genome data increasing exponentially since the last decade, compressing genome with Markov models has been proposed as an effective statistical method. However, existing methods set a static order-k Markov models to compress various genomes. Employing static order-k Markov model could result in a sub-optimal orders on some genomes. In this paper, we propose a compression method that relies on a pre-analysis of the data before compression, with the aim of estimating Markov models order k, yielding improvements over static Markov models. Experimental results on the latest complete bacterial genome data show that our method could effectively compress genome with a better performance than the state-of-the-art method. The codes of DMcompress are available at https://rongjiewang.github.io/DMcompress
机译:基因组数据以来呈指数增加以来,自上十年以来,已经提出了用马尔可夫模型的基因组作为有效的统计方法。但是,现有方法设置了静态顺序-K马尔可夫模型以压缩各种基因组。采用静态order-k马尔可夫模型可能导致某些基因组上的次优订单。在本文中,我们提出了一种压缩方法,该方法依赖于压缩前的数据预先分析,目的是估算马尔可夫模型顺序k,从静态马尔可夫模型产生改进。最新的完整细菌基因组数据的实验结果表明,我们的方法可以有效地压缩了比现有技术的性能更好的基因组。 DMCompress的代码可在https://rongjiewang.github.io/dmcrompress上获得

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