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Adaptive feasible and infeasible tabu search for weighted vertex coloring

机译:自适应可行和不可行的禁忌搜索加权顶点着色

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The Weighted Vertex Coloring Problem of a vertex weighted graph is to partition the vertex set into k disjoint independent sets such that the sum of the costs of these sets is minimized, where the cost of each set is given by the maximum weight of a vertex (representative) in that set. To solve this NP-hard problem, we present the adaptive feasible and infeasible search algorithm (AFISA) that relies on a mixed search strategy exploring both feasible and infeasible solutions. From an initial feasible solution, AFISA seeks improved solutions by oscillating between feasible and infeasible regions. To prevent the search from going too far from feasibility boundaries, we introduce a control mechanism that adaptively makes the algorithm to go back and forth between feasible and infeasible solutions. To explore the search space, we use a tabu search optimization procedure to ensure an intensified exploitation of candidate solutions and an adaptive perturbation strategy to escape local optimum traps. We show extensive experimental results on 161 benchmark instances and present new upper bounds that are useful for future studies. We assess the benefit of the key features of the proposed approach. This work demonstrates that examining both feasible and infeasible solutions during the search is a highly effective search strategy for the considered coloring problem and could beneficially be applied to other constrained problems as well. (C) 2018 Elsevier Inc. All rights reserved.
机译:顶点加权图的加权顶点着色问题是将顶点设置为k个不相交的独立集,使得这些组的成本的总和最小化,其中每个组的成本由顶点的最大重量给出(代表)在那个集中。为了解决这个问题,我们介绍了依赖于探索可行和不可行的解决方案的混合搜索策略的自适应可行和不可行的搜索算法(AFISA)。根据初始可行的解决方案,AFISA通过在可行和不可行的地区之间振荡寻求改进的解决方案。为了防止搜索远离可行性边界,我们介绍了一种控制机制,可自适应地使算法在可行和不可行的解决方案之间来回来回来。为了探索搜索空间,我们使用禁忌搜索优化程序,以确保候选解决方案的强化开发和自适应扰动策略来逃避局部最佳陷阱。我们在161项基准实例上显示了广泛的实验结果,并提出了对未来研究有用的新上限。我们评估所提出的方法的关键特征的好处。这项工作表明,在搜索期间检查可行性和不可行的解决方案是考虑着色问题的高效搜索策略,并且可以有利地应用于其他受限问题。 (c)2018年Elsevier Inc.保留所有权利。

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