Optimisation and Logistics, The University of Adelaide, Adelaide, SA 5005, Australia
Evol Comput. 2019 Fall;27(3):525-558. doi: 10.1162/evco_a_00233. Epub 2018 Jun 22.
The generalized travelling salesperson problem is an important NP-hard combinatorial optimization problem for which metaheuristics, such as local search and evolutionary algorithms, have been used very successfully. Two hierarchical approaches with different neighbourhood structures, namely a cluster-based approach and a node-based approach, have been proposed by Hu and Raidl (2008) for solving this problem. In this article, local search algorithms and simple evolutionary algorithms based on these approaches are investigated from a theoretical perspective. For local search algorithms, we point out the complementary abilities of the two approaches by presenting instances where they mutually outperform each other. Afterwards, we introduce an instance which is hard for both approaches when initialized on a particular point of the search space, but where a variable neighbourhood search combining them finds the optimal solution in polynomial time. Then we turn our attention to analysing the behaviour of simple evolutionary algorithms that use these approaches. We show that the node-based approach solves the hard instance of the cluster-based approach presented in Corus et al. (2016) in polynomial time. Furthermore, we prove an exponential lower bound on the optimization time of the node-based approach for a class of Euclidean instances.
广义旅行商问题是一个重要的 NP 难组合优化问题,元启发式方法,如局部搜索和进化算法,已经非常成功地应用于该问题。Hu 和 Raidl(2008)提出了两种具有不同邻域结构的分层方法,即基于聚类的方法和基于节点的方法,用于解决这个问题。在本文中,我们从理论角度研究了基于这两种方法的局部搜索算法和简单进化算法。对于局部搜索算法,我们通过展示它们在相互超越的实例中指出了两种方法的互补能力。之后,我们引入了一个实例,当在搜索空间的特定点上初始化时,这两个方法都很难解决,但使用它们的可变邻域搜索可以在多项式时间内找到最优解。然后,我们将注意力转向分析使用这些方法的简单进化算法的行为。我们表明,基于节点的方法可以在多项式时间内解决 Corus 等人(2016)提出的基于聚类的方法的困难实例。此外,我们证明了一类欧式实例的基于节点的方法的优化时间的指数下界。