Arnold Dirk V, MacLeod Alexander
Faculty of Computer Science, Dalhousie University, Halifax, NS, Canada.
Evol Comput. 2008 Summer;16(2):151-84. doi: 10.1162/evco.2008.16.2.151.
Step length adaptation is central to evolutionary algorithms in real-valued search spaces. This paper contrasts several step length adaptation algorithms for evolution strategies on a family of ridge functions. The algorithms considered are cumulative step length adaptation, a variant of mutative self-adaptation, two-point adaptation, and hierarchically organized strategies. In all cases, analytical results are derived that yield insights into scaling properties of the algorithms. The influence of noise on adaptation behavior is investigated. Similarities and differences between the adaptation strategies are discussed.
步长自适应是实值搜索空间中进化算法的核心。本文比较了一系列脊函数上进化策略的几种步长自适应算法。所考虑的算法包括累积步长自适应、变异自适应的一种变体、两点自适应和分层组织策略。在所有情况下,都得出了分析结果,从而深入了解算法的缩放特性。研究了噪声对自适应行为的影响。讨论了自适应策略之间的异同。