论文标题

元启发式黑盒优化的基准测试:观点和开放挑战

Benchmarking for Metaheuristic Black-Box Optimization: Perspectives and Open Challenges

论文作者

Sala, Ramses, Müller, Ralf

论文摘要

关于新优化算法的研究通常是基于这种算法可以提高应对现实世界和工业相关优化挑战的能力的动机的基础。除了在全球,连续和黑盒优化的背景下,已经开发了大量不同的进化和元启发式优化算法,还开发了许多测试问题和基准套件。但是,对于许多常用的合成基准问题或人工健身景观,没有可用的方法将所得算法的性能评估与技术相关的现实世界优化问题联系起来,反之亦然。同样,从理论的角度来看,许多常用的基准问题和方法几乎没有概括。基于具有批评意见,建议和新方法的出版物的迷你审查,这种沟通旨在对与黑盒优化的系统和可概括的基准测试相关的几个开放挑战和前瞻性研究方向进行建设性的看法。

Research on new optimization algorithms is often funded based on the motivation that such algorithms might improve the capabilities to deal with real-world and industrially relevant optimization challenges. Besides a huge variety of different evolutionary and metaheuristic optimization algorithms, also a large number of test problems and benchmark suites have been developed and used for comparative assessments of algorithms, in the context of global, continuous, and black-box optimization. For many of the commonly used synthetic benchmark problems or artificial fitness landscapes, there are however, no methods available, to relate the resulting algorithm performance assessments to technologically relevant real-world optimization problems, or vice versa. Also, from a theoretical perspective, many of the commonly used benchmark problems and approaches have little to no generalization value. Based on a mini-review of publications with critical comments, advice, and new approaches, this communication aims to give a constructive perspective on several open challenges and prospective research directions related to systematic and generalizable benchmarking for black-box optimization.

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