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Tackling the 'Curse of Dimensionality' of Radial Basis Functional Neural Networks Using a Genetic Algorithm

机译:使用遗传算法解决径向基函数神经网络的“维数”的“诅咒”

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Radial Basis Function (RBF) neural networks offer the possibility of faster gradient-based learning of neuron weights compared with Multi-Layer Perception (MLP) networks. This apparent advantage of RBF networks is bought at the expense of requiring a large number of hidden layer nodes, particularly in high dimensional spaces (the "curse of dimensionality"). This paper proposes a representation and associated genetic operators which are capable of evolving RBF networks with relatively small numbers of hidden layer nodes and good generalisation properties. The genetic operators employed also overcome the "competing conventions" problem, for RBF networks at least, which has been a reported stumbling block in the application of crossover operators in evolutionary learning of directly encoded neural network architectures.
机译:径向基函数(RBF)神经网络与多层感知(MLP)网络相比,神经网络提供了更快的基于梯度学习的神经元权重。 RBF网络的这种表观优势是以要求大量隐藏层节点的代价购买的,特别是在高尺寸空间(“维度的”诅咒“)。本文提出了一种表示和相关的遗传算子,其能够使用相对少量的隐藏层节点和良好的概率性质来发展RBF网络。所雇用的遗传经营者还克服了“竞争公约”问题,对于RBF网络,至少是一个报告的绊脚石,在应用交叉运营商在直接编码的神经网络架构的进化学习中。

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