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A 2-Approximation Algorithm for the Complementary Maximal Strip Recovery Problem

机译:互补最大带钢恢复问题的2-近似算法

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The Maximal Strip Recovery problem (MSR) and its complementary (CMSR) are well-studied NP-hard problems in computational genomics. The input of these dual problems are two signed permutations. The goal is to delete some gene markers from both permutations, such that, in the remaining permutations, each gene marker has at least one common neighbor. Equivalently, the resulting permutations could be partitioned into common strips of length at least two. Then MSR is to maximize the number of remaining genes, while the objective of CMSR is to delete the minimum number of gene markers. In this paper, we present a new approximation algorithm for the Complementary Maximal Strip Recovery (CMSR) problem. Our approximation factor is 2, improving the currently best 7/3-approximation algorithm. Although the improvement on the factor is not huge, the analysis is greatly simplified by a compensating method, commonly referred to as the non-oblivious local search technique. In such a method a substitution may not always increase the value of the current solution (it sometimes may even decrease the solution value), though it always improves the value of another function seemingly unrelated to the objective function.
机译:最大条带回收率问题(MSR)及其补充(CMSR)是计算基因组学中经过充分研究的NP难题。这些双重问题的输入是两个有符号排列。目的是从两个排列中删除一些基因标记,以便在其余排列中,每个基因标记具有至少一个共同的邻居。等效地,可以将所得的排列划分为长度至少为两个的公共条带。 MSR的目的是最大化剩余基因的数量,而CMSR的目标是删除最小数量的基因标记。在本文中,我们提出了一种新的近似算法,用于补充最大条带回收(CMSR)问题。我们的近似系数是2,改进了目前最好的7/3近似算法。尽管该因素的改进并不大,但是通过一种补偿方法(通常称为非遗忘局部搜索技术)可以大大简化分析。在这种方法中,替换可能不会总是增加当前解决方案的值(有时甚至可能会减少解决方案的值),尽管它总是会改善似乎与目标函数无关的另一个函数的值。

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