利用语法进化调整 RBF 网络参数

AI Pub Date : 2023-12-11 DOI:10.3390/ai4040054
I. Tsoulos, Alexandros T. Tzallas, E. Karvounis
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引用次数: 0

摘要

径向基函数网络广泛应用于各种科学领域的分类和数据拟合问题。这些网络通过各种优化技术调整参数来解决上述问题。然而,需要解决的一个重要问题是,在调整网络参数之前,需要找到一个令人满意的参数区间。本文提出了一种分两个阶段的方法。在第一阶段,通过语法进化,生成规则以创建网络参数的最佳值区间。在该技术的第二阶段,利用遗传算法对上述参数进行微调。目前的工作在最近文献中的一些数据集上进行了测试,发现在大多数数据集上,分类或数据拟合误差减少了 40% 以上。此外,在实验中发现,所提出的方法具有鲁棒性,因为网络参数数量的波动不会对其性能产生显著影响。
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Adapting the Parameters of RBF Networks Using Grammatical Evolution
Radial basis function networks are widely used in a multitude of applications in various scientific areas in both classification and data fitting problems. These networks deal with the above problems by adjusting their parameters through various optimization techniques. However, an important issue to address is the need to locate a satisfactory interval for the parameters of a network before adjusting these parameters. This paper proposes a two-stage method. In the first stage, via the incorporation of grammatical evolution, rules are generated to create the optimal value interval of the network parameters. During the second stage of the technique, the mentioned parameters are fine-tuned with a genetic algorithm. The current work was tested on a number of datasets from the recent literature and found to reduce the classification or data fitting error by over 40% on most datasets. In addition, the proposed method appears in the experiments to be robust, as the fluctuation of the number of network parameters does not significantly affect its performance.
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