This paper investigates the performance of three black-box optimizers exploiting separability on the 24 large-scale BBOB functions, including the Hooke-Jeeves method, MTS-LS1, and BSrr. Although BSrr was not specially designed for large-scale optimization, the results show that BSrr has a state-of-the-art performance on the five separable large-scale BBOB functions. The results show that the asymmetry significantly influences the performance of MTS-LS1. The results also show that the Hooke-Jeeves method performs better than MTS-LS1 on unimodal separable BBOB functions.
翻译:本文件调查三个黑箱优化器的性能,利用BBBB24个大型功能,包括Hooke-Jeeves方法、MTS-LS1和BSrr的分离性。 虽然BSrr不是专门设计用于大规模优化的,但结果显示BSrr在5个可分离的BBBB大型功能上具有最先进的性能。结果显示,不对称性对MTS-LS1的性能有重大影响。结果还显示,Hooke-Jeeves方法在单式单式单式分解BBBB的功能上的表现优于MTS-LS1。