A. G. Bari, Alessio Gaspar, R. P. Wiegand, Anthony Bucci
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引用次数: 5
摘要
基于种群的Pareto Hill Climber (P-PHC)算法举例说明了协同进化计算方法,该方法管理一组候选解决方案,这些解决方案既用作探索底层搜索空间的种群,又用于满足所采用的解决方案概念的存档保存解决方案。在某些情况下,当需要进行简洁的评估时,为两个目的使用同一组候选解决方案可能会导致效率低下。在这样的算法中,对帕累托支配概念的依赖可能会对搜索过程造成瓶颈,因为大多数新生成的解决方案都是非支配的,因此与它们最终应该取代的当前解决方案相比,它们似乎同样适合选择。我们提出了新的选择条件,包括帕累托支配和帕累托非支配的解决方案,以及其他因素,以帮助提供选择的区别。考虑帕累托非主导解决方案的潜在好处,可以通过层次的潜在交互空间的可视化来说明。此外,我们定义了一些新的性能指标,允许人们根据共同进化的理想评估来比较我们的各种选择方法。在最后一代中保留较少的重复解决方案,从而允许更有效地使用固定的种群大小。
Selection Methods to Relax Strict Acceptance Condition in Test-Based Coevolution
The Population-based Pareto Hill Climber (P-PHC) algorithm exemplifies coevolutionary computation approaches that manage a group of candidate solutions both used as a population to explore the underlying search space as well as an archive preserving solutions that meet the adopted solution concept. In some circumstances when parsimonious evaluations are desired, inefficiencies can arise from using the same group of candidate solutions for both purposes. The reliance, in such algorithms, on the otherwise beneficial Pareto dominance concept can create bottlenecks on search progress as most newly generated solutions are non-dominated, and thus appear equally qualified to selection, when compared to the current ones they should eventually replace. We propose new selection conditions that include both Pareto dominated and Pareto non-dominated solutions, as well as other factors to help provide distinctions for selection. The potential benefits of also considering Pareto non-dominated solutions are illustrated by a visualization of the underlying interaction space in terms of levels. In addition, we define some new performance metrics that allow one to compare our various selection methods in terms of ideal evaluation of coevolution. Fewer duplicate solutions are retained in the final generation, thus allowing for more efficient usage of the fixed population size.