两种进化控制下适应度景观学习进化计算的搜索动力学

Taku Hasegawa, Kento Tsukada, N. Mori, Keinosuke Matsumoto
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引用次数: 0

摘要

进化计算(EC)中的适应度逼近方法在实际优化中提供了很好的结果。另一方面,人们对每种代理模型的优缺点知之甚少。此外,模型的性能依赖于原始函数的结构。因此,不同的代理模型可以得到更好的结果。我们还提出了一种新的代理模型,该模型可以使用支持向量机估计两个个体的唯一秩。此外,我们还提出了基于适应度景观学习进化计算(FLLEC)模型的EC框架,并取得了良好的效果。本文对FLLEC中的两种进化控制方法进行了比较,并进行了计算实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Search dynamics of fitness landscape learning evolutionary computation with two types of evolution control
Fitness approximation methods in Evolutionary Computation (EC) provide us good results in real-world optimization. On the other hand, little is known about the advantages and disadvantages of each surrogate models. Moreover, the performance of models depends on a structure of original function. Therefore, various kinds of surrogate models can leads to better results. We also have proposed a novel surrogate model which can estimate the only rank of two individuals using Support Vector Machine. In addition, we have proposed EC framework with that model called Fitness Landscape Learning Evolutionary Computation (FLLEC) which has shown good performance. In this paper, we compared two type of evolution control in FLLEC with the computational experiments.
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