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An Evolving Radial Basis Neural Network with Adaptive Learning of Its Parameters and Architecture

机译:进化的径向基神经网络及其参数和体系结构的自适应学习

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The paper proposes a learning method for an evolving Radial Basis Neural Network that makes it possible in an online mode to adjust not only synaptic weights but also parameters of the radial basis functions and the network architecture. A special feature of architecture learning is that a number of neurons in the network can both increase and decrease with a sequential stream of information at the system input. The implementation of the proposed algorithms has low computational complexity. The proposed evolving neural network can process data in an online mode.
机译:本文提出了一种用于进化的径向基神经网络的学习方法,该方法可以在线调整突触权重,还可以调整径向基函数和网络体系结构的参数。架构学习的一个特殊功能是,网络中的许多神经元可以随着系统输入处的顺序信息流而增加和减少。所提出算法的实现具有较低的计算复杂度。所提出的演化神经网络可以在线模式处理数据。

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