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Iterated local search vs. hyper-heuristics: Towards general-purpose search algorithms

机译:迭代本地搜索与超启发式搜索:面向通用搜索算法

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An important challenge within hyper-heuristic research is to design search methodologies that work well, not only across different instances of the same problem, but also across different problem domains. This article conducts an empirical study involving three different domains in combinatorial optimisation: bin packing, permutation flow shop and personnel scheduling. Using a common software interface (HyFlex), the same algorithms (high-level strategies or hyper-heuristics) can be readily run on all of them. The study is intended as a proof of concept of the proposed interface and domain modules, as a benchmark for testing the generalisation abilities of heuristic search algorithms. Several algorithms and variants from the literature were implemented and tested. From them, the implementation of iterated local search produced the best overall performance. Interestingly, this is one of the most conceptually simple competing algorithms, its advantage as a robust algorithm is probably due to two factors: (i) the simple yet powerful exploration/exploitation balance achieved by systematically combining a perturbation followed by local search; and (ii) its parameter-less nature. We believe that the challenge is still open for the design of robust algorithms that can learn and adapt to the available low-level heuristics, and thus select and apply them accordingly.
机译:超启发式研究中的一个重要挑战是设计一种不仅在同一个问题的不同实例之间,而且在不同问题域之间都有效的搜索方法。本文进行了一项涉及组合优化的三个不同领域的实证研究:箱包装,排列流水车间和人员调度。使用通用软件界面(HyFlex),可以在所有算法上轻松运行相同的算法(高级策略或超启发式算法)。该研究旨在作为所提出的接口和域模块的概念证明,作为测试启发式搜索算法的泛化能力的基准。实施和测试了文献中的几种算法和变体。通过它们,迭代本地搜索的实现产生了最佳的整体性能。有趣的是,这是概念上最简单的竞争算法之一,它作为鲁棒算法​​的优势可能归因于两个因素:(i)通过系统地组合扰动和局部搜索来实现简单而强大的勘探/开发平衡。 (ii)它的无参数性质。我们认为,设计可靠的算法仍然面临挑战,该算法可以学习和适应可用的低级启发式算法,并据此选择并应用它们。

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