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HIERARCHICAL RANK DENSITY GENETIC ALGORITHM FOR RADIAL-BASIS FUNCTION NEURAL NETWORK DESIGN

机译:径向基函数神经网络设计的层级密度遗传算法

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摘要

In this paper, we propose a genetic algorithm based design procedure for a radial-basis function neural network. A Hierarchical Rank Density Genetic Algorithm (HRDGA) is used to evolve the neural network's topology and parameters simultaneously. Compared with traditional genetic algorithm based designs for neural networks, the hierarchical approach addresses several deficiencies highlighted in literature. In addition, the rank-density based fitness assignment technique is used to optimize the performance and topology of the evolved neural network to deal with the confliction between the training performance and network complexity. Instead of producing a single optimal solution, HRDGA provides a set of near-optimal neural networks to the designers so that they can have more flexibility for the final decision-making based on certain preferences. In terms of searching for a near-complete set of candidate networks with high performances, the networks designed by the proposed algorithm prove to be competitive, or even superior, to three other traditional radial-basis function networks for predicting Mackey-Glass chaotic time series.
机译:在本文中,我们提出了一种基于遗传算法的径向基函数神经网络的设计程序。等级秩密度遗传算法(HRDGA)用于同时演化神经网络的拓扑和参数。与传统的基于遗传算法的神经网络设计相比,分层方法解决了文献中突出的几个缺陷。此外,基于秩密度的适应度分配技术用于优化演化神经网络的性能和拓扑,以解决训练性能与网络复杂性之间的冲突。 HRDGA不会提供单一的最佳解决方案,而是为设计人员提供了一组近乎最佳的神经网络,因此他们可以根据某些偏好为最终决策提供更大的灵活性。在寻找具有高性能的候选网络的近完整集方面,由该算法设计的网络被证明与其他三个用于预测Mackey-Glass混沌时间序列的传统径向基函数网络相比甚至更具竞争性。

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