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Selecting a diverse set of benchmark instances from a tunable model problem for black-box discrete optimization algorithms

机译:从可调谐模型问题中选择一个不同的基准实例,用于黑盒离散优化算法

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As the number of practical applications of discrete black-box metaheuristics is growing faster and faster, the benchmarking of these algorithms is rapidly gaining importance. While new algorithms are often introduced for specific problem domains, researchers are also interested in which general problem characteristics are hard for which type of algorithm. The W-Model is a benchmark function for discrete black-box optimization, which allows for the easy, fast, and reproducible generation of problem instances exhibiting characteristics such as ruggedness, deceptiveness, epistasis, and neutrality in a tunable way. We conduct the first large-scale study with the W-Model in its fixed-length singleobjective form, investigating 17 algorithm configurations (including Evolutionary Algorithms and local searches) and 8372 problem instances. We develop and apply a machine learning methodology to automatically discover several clusters of optimization process runtime behaviors as well as their reasons grounded in the algorithm and model parameters. Both a detailed statistical evaluation and our methodology confirm that the different model parameters allow us to generate problem instances of different hardness, but also find that the investigated algorithms struggle with different problem characteristics. With our methodology, we select a set of 19 diverse problem instances with which researchers can conduct a fast but still in-depth analysis of algorithm performance. The bestperforming algorithms in our experiment were Evolutionary Algorithms applying Frequency Fitness Assignment, which turned out to be robust over a wide range of problem settings and solved more instances than the other tested algorithms. (C) 2020 Elsevier B.V. All rights reserved.
机译:随着离散的黑匣子型培育运区的实际应用数量越来越快,更快地增长,这些算法的基准迅速获得了重要性。虽然用于特定问题域通常介绍新的算法,但研究人员也感兴趣的是,哪种常规问题特征是哪种类型的算法。 W模型是离散黑匣子优化的基准函数,其允许以可调谐方式表现出具有诸如坚固性,欺骗性,超越和中立等特征的容易,快速,可再现的问题实例。我们以固定长度的单体目标形式与W模型进行第一个大型研究,调查17次算法配置(包括进化算法和本地搜索)和8372个问题实例。我们开发并应用机器学习方法,以便自动发现多个优化过程运行时行为的集群以及算法和模型参数的原因。详细统计评估和我们的方法确认了不同的模型参数允许我们生成不同硬度的问题实例,而且还发现研究的算法与不同的问题特征斗争。通过我们的方法,我们选择了一组19个不同的问题实例,研究人员可以进行快速但仍深入分析算法性能。我们的实验中的最佳形态算法是应用频率健身分配的进化算法,其原本于多种问题设置和解决比其他测试算法更具稳健。 (c)2020 Elsevier B.V.保留所有权利。

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