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A divide and conquer matheuristic algorithm for the Prize-collecting Steiner Tree Problem

机译:分税制斯坦纳树问题的分治法数学算法

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The Prize-collecting Steiner Tree Problem (PCSTP) is a well-known problem in graph theory and combinatorial optimization. It has been successfully applied to solve real problems such as fiber-optic and gas distribution networks design. In this work, we concentrate on its application in biology to perform a functional analysis of genes. It is common to analyze large networks in genomics to infer a hidden knowledge. Due to the NP-hard characteristics of the PCSTP, it is computationally costly, if possible, to achieve exact solutions for such huge instances. Therefore, there is a need for fast and efficient matheuristic algorithms to explore and understand the concealed information in huge biological graphs. In this study, we propose a matheuristic method based on clustering algorithm. The main target of the method is to scale up the applicability of the currently available exact methods to large graph instances, without loosing too much on solution quality. The proposed matheuristic method is composed of a preprocessing procedures, a heuristic clustering algorithm and an exact solver for the PCSTP, applied on sub-graphs. We examine the performance of the proposed method on real-world benchmark instances from biology, and compare its results with those of the exact solver alone, without the heuristic clustering. We obtain solutions in shorter execution time and with negligible optimality gaps. This enables analyzing very large biological networks with the currently available exact solvers. (C) 2015 Elsevier Ltd. All rights reserved.
机译:奖池斯坦纳树问题(PCSTP)是图论和组合优化中的一个众所周知的问题。它已成功应用于解决实际问题,例如光纤和气体分配网络设计。在这项工作中,我们专注于其在生物学中的应用,以执行基因的功能分析。在基因组学中分析大型网络以推断出隐藏的知识是很常见的。由于PCSTP具有NP难处理的特性,因此,如果可能的话,要为如此庞大的实例实现精确的解决方案在计算上是昂贵的。因此,需要快速有效的数学算法来探索和理解巨大生物图中的隐藏信息。在这项研究中,我们提出了一种基于聚类算法的数学方法。该方法的主要目标是将当前可用的精确方法的适用范围扩大到大型图实例,而又不会过多地降低解决方案的质量。所提出的数学方法由预处理程序,启发式聚类算法和应用于子图的PCSTP精确求解器组成。我们检查了该方法在生物学上的实际基准实例上的性能,并将其结果与单独的精确求解器进行了比较,而没有启发式聚类。我们以更短的执行时间以及可忽略的最佳差距获得解决方案。这使得可以使用当前可用的精确求解器分析非常大的生物网络。 (C)2015 Elsevier Ltd.保留所有权利。

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