Noisy optimization problems - a particular challenge for differential evolution?

T. Krink, B. Filipič, G. Fogel
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引用次数: 145

Abstract

The popularity of search heuristics has lead to numerous new approaches in the last two decades. Since algorithm performance is problem dependent and parameter sensitive, it is difficult to consider any single approach as of greatest utility overall problems. In contrast, differential evolution (DE) is a numerical optimization approach that requires hardly any parameter tuning and is very efficient and reliable on both benchmark and real-world problems. However, the results presented in this paper demonstrate that standard methods of evolutionary optimization are able to outperform DE on noisy problems when the fitness of candidate solutions approaches the fitness variance caused by the noise.
噪声优化问题-微分进化的一个特殊挑战?
在过去的二十年里,搜索启发式的流行导致了许多新的方法。由于算法性能与问题相关且参数敏感,因此很难将任何单一方法视为最大效用总体问题。相比之下,差分进化(DE)是一种数值优化方法,几乎不需要任何参数调优,在基准测试和实际问题上都非常有效和可靠。然而,本文的结果表明,当候选解的适应度接近噪声引起的适应度方差时,进化优化的标准方法能够优于DE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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