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A hybrid Lagrangian Particle Swarm Optimization Algorithm for the degree-constrained minimum spanning tree problem

机译:一种杂交拉格朗日粒子群优化算法,用于度计最小跨越树问题

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This paper presents a new hybrid heuristic combining particle swarm optimization with a Lagrangian heuristic along the lines first proposed by Wedelin. We will refer to this as a Combinatorial Lagrangian Particle Swarm Optimization Algorithm (CoLaPSO). It uses a problem representations that works simultaneously in the dual space (Lagrangian multipliers) and the primal space in the form of cost perturbations. The CoLaPSO method is applied to solving the degree constrained minimum spanning tree problem. This NP-hard problem consists of finding a minimum cost spanning tree on a graph such that none of the vertices is connected to more than a fixed number of edges. The hybrid heuristic inherits from the Lagrangian parent an ability to calculate lower bounds on the objective and from the particle swarm optimization the ability to effectively parallelise the algorithm. Empirical evaluation using standard test problems from the literature show that the new method outperforms previously published heuristics for this problem and also computes useful lower bounds.
机译:本文提出了一种新的混合启发式组合粒子群优化,沿着Wedelin提出的线路沿着Lagrangian启发式派。我们将参考这一点作为组合拉格朗日粒子群优化算法(ColaPSO)。它使用了在双层空间(拉格朗日乘法器)中同时工作的问题表示以及以成本扰动的形式的原始空间。 ColaPSO方法应用于解决程度约束的最小生成树问题。这种NP难题问题包括在图中找到最小成本生成树,使得没有一个顶点连接到多于固定数量的边缘。混合启发式从拉格朗日父母继承了一个能够计算目标和粒子群优化的下限能力,该粒子群优化能够有效地有效地对算法有同地的能力。从文献中使用标准测试问题的实证评估表明,新方法优于此问题的先前发表的启发式,还计算了有用的下限。

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