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Consultant-Guided Search Algorithms with Local Search for the Traveling Salesman Problem

机译:带有本地搜索的旅行商问题的顾问指导搜索算法

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Consultant-Guided Search (CGS) is a recent metaheuristic for combinatorial optimization problems, which has been successfully applied to the Traveling Salesman Problem (TSP). In experiments without local search, it has been able to outperform some of the best Ant Colony Optimization (ACO) algorithms. However, local search is an important part of any ACO algorithm and a comparison without local search can be misleading. In this paper, we investigate if CGS is still able to compete with ACO when all algorithms are combined with local search. In addition, we propose a new variant of CGS for the TSP, which introduces the concept of confidence in relation to the recommendations made by consultants. Our experimental results show that the solution quality obtained by this new CGS algorithm is comparable with or better than that obtained by Ant Colony System and MAX-MIN Ant System with 3-opt local search.
机译:顾问指导搜索(CGS)是一种针对组合优化问题的最新元启发式方法,已成功应用于旅行商问题(TSP)。在没有本地搜索的实验中,它已经能够胜过某些最佳的蚁群优化(ACO)算法。但是,本地搜索是任何ACO算法的重要组成部分,没有本地搜索的比较可能会产生误导。在本文中,我们研究了将所有算法与本地搜索结合使用时CGS是否仍然能够与ACO竞争。此外,我们为TSP提出了CGS的新变体,其中引入了与顾问提出的建议相关的信任概念。我们的实验结果表明,通过新的CGS算法获得的解决方案质量与具有3-opt局部搜索的蚁群系统和MAX-MIN蚂蚁系统获得的解决方案质量相当或更好。

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