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Global search algorithms using a combinatorial unranking-based problem representation for the critical node detection problem

机译:针对关键节点检测问题使用基于组合不排序的问题表示的全局搜索算法

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In this paper the problem of critical node detection (CNDP) is approached using population-based incremental learning (an estimation of distribution algorithm) and simulated annealing optimization algorithms using a combinatorial unranking-based problem representation. This representation is space-efficient and alleviates the need for any repair mechanisms. CNDP is a very recently proposed problem that aims to identify a vertex set V is conted in V of k > 0 nodes from a given graph G = (V,E) such that G(VV') has minimum pairwise connectivity. Numerous practical applications for this problem exist, including pandemic disease mitigation, computer security and anti-terrorism. In order to test the proposed heuristics 16 benchmark random graph structures are additionally proposed that utilize Erdos-Renyi, Watts-Strogatz, Forest Fire and Barabasi-Albert models. Each of these models presents different network characteristics, yielding variations in problem difficulty. The relative merits of the two proposed approaches are compared and it is found that the population-based incremental learning approach, using a windowed perturbation operator is able to outperform the proposed simulated annealing method.
机译:本文使用基于种群的增量学习(分布算法的估计)和使用基于组合不排序的问题表示的模拟退火优化算法来解决关键节点检测(CNDP)问题。这种表示是节省空间的,并减少了对任何修复机制的需求。 CNDP是一个最近提出的问题,旨在从给定图G =(V,E)的k个k> 0个节点的V中识别顶点集V,以使G(VV')具有最小的成对连通性。存在许多针对该问题的实际应用,包括减轻大流行性疾病,计算机安全和反恐。为了测试提议的启发式方法,还另外提出了16个基准随机图结构,这些结构利用Erdos-Renyi,Watts-Strogatz,Forest Fire和Barabasi-Albert模型。这些模型中的每一个都呈现出不同的网络特征,从而产生问题难度的变化。比较了两种拟议方法的相对优点,发现使用基于窗口扰动算子的基于种群的增量学习方法能够胜过拟议的模拟退火方法。

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