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A Note on Problem Difficulty Measures in Black-Box Optimization: Classification, Realizations and Predictability

机译:黑盒优化中的问题难点措施的注记:分类,实现和可预测性

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摘要

Various methods have been defined to measure the hardness of a fitness function for evolutionary algorithms and other black-box heuristics. Examples include fitness landscape analysis, epistasis, fitness-distance correlations etc., all of which are relatively easy to describe. However, they do not always correctly specify the hardness of the function. Some measures are easy to implement, others are more intuitive and hard to formalize.This paper rigorously defines difficulty measures in black-box optimization and proposes a classification. Different types of realizations of such measures are studied, namely exact and approximate ones. For both types of realizations, it is proven that predictive versions that run in polynomial time in general do not exist unless certain complexity-theoretical assumptions are wrong.
机译:对于进化算法和其他黑盒启发式方法,已经定义了各种方法来测量适应度函数的硬度。示例包括健身景观分析,上位性,健身距离相关性等,所有这些都相对容易描述。但是,它们并不总是正确地指定功能的硬度。其中一些措施易于实施,而另一些则更加直观且难以形式化。本文严格定义了黑箱优化中的困难措施并提出了分类。研究了这些度量的不同类型的实现,即精确度量和近似度量。对于这两种类型的实现,都证明了通常不会在多项式时间内运行的预测版本,除非某些复杂性理论假设错误。

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