分布式遗传规划中亚种群的群集

Giedrius Paulikas, D. Rubliauskas
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引用次数: 2

摘要

遗传规划算法的分布提高了求解效率,但这种分布的附加参数是不可取的。本文对早期实验结果进行了分析,分析了利用群集控制分布子种群之间的相互作用,从而减少了人工干预。在运行时动态设置迁移参数的可能性使分布式遗传规划算法达到了与标准遗传规划相同的自动化水平,同时保持了分布式遗传规划的提高性能。本文讨论了GP算法在采用群集进行迁移控制时所需额外计算量的性质。实证结果支持将两种搜索技术混合在一起的想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flocking of subpopulations in distributed genetic programming
The distribution of the genetic programming algorithm improves the efficiency of the search for the solution, but additional parameters of this distribution are undesirable. This paper presents the analysis of early experimental results of using flocking to control interactions among the distributed subpopulations so less human intervention is needed The possibility to set up migration parameters dynamically at the run time brings the distributed genetic programming algorithm to the same level of automation as standard genetic programming while keeping the increased performance of the distributed GP. The paper discusses the nature of the required additional computations of the GP algorithm when adapting flocking for migration control. The positive empirical results support the idea of mixing both search techniques together.
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