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Re-inspiring the genetic algorithm with multi-level selection theory: multi-level selection genetic algorithm

机译:利用多级选择理论重新启动遗传算法:多级选择遗传算法

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Genetic algorithms are integral to a range of applications. They utilise Darwin's theory of evolution to find optimal solutions in large complex spaces such as engineering, to visualise the design space, artificial intelligence, for pattern classification, and financial modelling, improving predictions. Since the original genetic algorithm was developed, new theories have been proposed which are believed to be integral to the evolution of biological systems. However, genetic algorithm development has focused on mathematical or computational methods as the basis for improvements to the mechanisms, moving it away from its original evolutionary inspiration. There is a possibility that the new evolutionary mechanisms are vital to explain how biological systems developed but they are not being incorporated into the genetic algorithm; it is proposed that their inclusion may provide improved performance or interesting feedback to evolutionary theory. Multi-level selection is one example of an evolutionary theory that has not been successfully implemented into the genetic algorithm and these mechanisms are explored in this paper. The resulting multi-level selection genetic algorithm (MLSGA) is unique in that it has different reproduction mechanisms at each level and splits the fitness function between these mechanisms. There are two variants of this theory and these are compared with each other alongside a unified approach. This paper documents the behaviour of the two variants, which show a difference in behaviour especially in terms of the diversity of the population found between each generation. The multi-level selection 1 variant moves rapidly towards the optimal front but with a low diversity amongst its children. The multi-level selection 2 variant shows a slightly slower evolution speed but with a greater diversity of children. The unified selection exhibits a mixed behaviour between the original variants. The different performance of these variants can be utilised
机译:遗传算法与一系列应用程序都是一体的。它们利用达尔文的演化论,以便在诸如工程之类的大型复杂空间中找到最佳解决方案,以可视化设计空间,人工智能,用于模式分类,以及改进预测。由于开发了原始的遗传算法,所以提出了新的理论,被认为是生物系统演化的一体化。然而,遗传算法的开发集中在数学或计算方法上,作为改善机制的基础,将其从原始进化的灵感上移动。新的进化机制有可能对于解释生物系统如何发展而是不纳入遗传算法的至关重要。建议他们的包含可以为进化理论提供改进的性能或有趣的反馈。多级别选择是尚未成功实施到遗传算法中的进化理论的一个例子,本文探讨了这些机制。所得到的多级选择遗传算法(MLSGA)是独特的,因为它在每个电平处具有不同的再现机制,并在这些机制之间分配适合度函数。该理论有两个变体,这些理论与统一的方法一起相互比较。本文记录了两种变体的行为,其表现出行为的差异,特别是在每代人口之间的多样性方面。多级选择1变型迅速朝向最佳前线移动,但在其儿童之间具有低多样性。多级选择2变体显示出略微较慢的演化速度,但具有更大的儿童多样性。统一选择在原始变体之间表现出混合行为。可以使用这些变体的不同性能

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