基于斜率至最优解的旅行商问题实例硬度评价

Log. J. IGPL Pub Date : 2020-01-24 DOI:10.1093/jigpal/jzz070
M. Cárdenas-Montes
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引用次数: 1

摘要

旅行商问题是组合优化中最常见的问题之一。它经常被用作进化算法性能的基准。由于这个原因,现在的从业者要求新的和更困难的实例来解决这个问题。这就引出了如何评价实例的内在难度以及如何区分易、难实例的问题。通过开发分离易解和难解实例的方法,研究人员可以公平地测试其组合优化器的性能。在这项工作中,提出了一种评估最优解附近旅行推销员问题实例难度的方法。问题是,最优解决方案附近的适应度景观是否编码了足够的信息,以便根据其内在难度将实例分开。这种方法是基于使用随机漫步来探索最优解的接近度。通过在每一步改变两个城市之间的一个连接来修改最优解,同时评估修改后的解的适应度。这允许评估健身景观的斜率。然后,利用之前的信息,利用随机森林和人工神经网络对实例的难度进行评估。在这项工作中,这种方法面临着一系列广泛的实例。因此,本文提出并评价了一种按难易程度分离旅行推销员问题实例的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Slope-to-optimal-solution-based evaluation of the hardness of travelling salesman problem instances
The travelling salesman problem is one of the most popular problems in combinatorial optimization. It has been frequently used as a benchmark of the performance of evolutionary algorithms. For this reason, nowadays practitioners request new and more difficult instances of this problem. This leads to investigate how to evaluate the intrinsic difficulty of the instances and how to separate ease and difficult instances. By developing methodologies for separating easy- from difficult-to-solve instances, researchers can fairly test the performance of their combinatorial optimizers. In this work, a methodology for evaluating the difficulty of instances of the travelling salesman problem near the optimal solution is proposed. The question is if the fitness landscape near the optimal solution encodes enough information to separate instances in function of their intrinsic difficulty. This methodology is based on the use of a random walk to explore the closeness of the optimal solution. The optimal solution is modified by altering one connection between two cities at each step, at the same time that the fitness of the altered solution is evaluated. This permits evaluating the slope of the fitness landscape. Later, and using the previous information, the difficulty of the instance is evaluated with random forests and artificial neural networks. In this work, this methodology is confronted with a wide set of instances. As a consequence, a methodology to separate the instances of the travelling salesman problem by their degree of difficulty is proposed and evaluated.
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