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SimBa-2: Improving a novel similarity-based crossover for the evolution of artificial neural networks

机译:SimBa-2:为人工神经网络的发展改进基于相似度的新颖分频器

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This work presents SimBa-2, an improved version of a novel crossover specifically adapted to the evolutionary optimization of neural network designs that aims at overcoming one of the major problems of recombination, known as the permutation problem. The crossover is based on a so-called ‘local similarity’ between two individuals selected for the recombination process from the population, and it is applied according to a similarity threshold. An approach exploiting this operator has been implemented and applied to five benchmark classification problems in machine learning, chosen among some of the well known classification problems provided by the UCI Machine Learning Repository. The application of different similarity threshold values has been investigated and the experimental results show how the behavior of the operator changes with respect to this parameter.
机译:这项工作提出了SimBa-2,这是一种新型交叉的改进版本,特别适合于神经网络设计的进化优化,旨在克服重组的主要问题之一,即排列问题。交叉基于从总体中选择用于重组过程的两个个体之间的所谓“局部相似性”,并且根据相似性阈值进行应用。已经实施了一种利用该运算符的方法,并将其应用于机器学习中的五个基准分类问题,这些问题是从UCI机器学习存储库提供的一些众所周知的分类问题中选择的。已经研究了不同相似性阈值的应用,并且实验结果显示了操作员的行为相对于该参数如何变化。

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