跨域启发式搜索的模因算法

E. Özcan, Shahriar Asta, Cevriye Altintas
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引用次数: 5

摘要

hyperheuristic Flexible Framework (HyFlex)是一个接口,用于开发、测试和比较迭代的通用启发式搜索算法,特别是选择超启发式算法。选择超启发式是一种高层次的方法,它在搜索过程中协调一组固定的低级启发式(操作符)的相互作用。HyFlex的Java实现以及不同的问题域最近被用于一个竞赛,称为跨域启发式搜索挑战(CHeSC2011)。CHeSC2011从六个不同问题域的一组实例中寻求具有最佳中值性能的最佳选择超启发式算法。每个问题域实现包含四种不同类型的算子,即突变算子、破坏重建算子、爬坡算子和交叉算子。CHeSC2011,包括竞争的超启发式方法,目前作为超启发式研究的基准。考虑到在HyFlex框架下实现的运算符的类型,CHeSC2011也可以作为一个基准,在各种离散优化问题域上经验地比较进化计算方法的适当变体的性能。在这项研究中,我们研究了在CHeSC2011基准的六个问题域上,混合遗传算法和爬山的通用稳态和跨代模因算法的性能和通用性水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memetic algorithms for Cross-domain Heuristic Search
Hyper-heuristic Flexible Framework (HyFlex) is an interface designed to enable the development, testing and comparison of iterative general-purpose heuristic search algorithms, particularly selection hyper-heuristics. A selection hyper-heuristic is a high level methodology that coordinates the interaction of a fixed set of low level heuristics (operators) during the search process. The Java implementation of HyFlex along with different problem domains was recently used in a competition, referred to as Cross-domain Heuristic Search Challenge (CHeSC2011). CHeSC2011 sought for the best selection hyper-heuristic with the best median performance over a set of instances from six different problem domains. Each problem domain implementation contained four different types of operators, namely mutation, ruin-recreate, hill climbing and crossover. CHeSC2011 including the competing hyper-heuristic methods currently serves as a benchmark for hyper-heuristic research. Considering the type of the operators implemented under the HyFlex framework, CHeSC2011 could also be used as a benchmark to empirically compare the performance of appropriate variants of the evolutionary computation methods across a variety of problem domains for discrete optimisation. In this study, we investigate the performance and generality level of generic steady-state and transgenerational memetic algorithms which hybridize genetic algorithms with hill climbing across six problem domains of the CHeSC2011 benchmark.
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