首页> 外文会议>11th European Symposium on Artificial Neural Networks (ESANN '2003); Apr 23-25, 2003; Bruges, Belgium >Approximation of Function by Adaptively Growing Radial Basis Function Neural Networks
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Approximation of Function by Adaptively Growing Radial Basis Function Neural Networks

机译:通过自适应增长的径向基函数神经网络逼近函数

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In this paper a neural network for approximating function is described. The activation functions of the hidden nodes are the Radial Basis Functions (RBF) whose parameters are learnt by a two-stage gradient descent strategy. A new growing radial basis functions-node insertion strategy with different radial basis functions is used in order to improve the net performances. The learning strategy is able to save computational time and memory space because of the selective growing of nodes whose activation functions consist of different radial basis functions. An analysis of the learning capabilities and a comparison of the net performances with other approaches have been performed. It is shown that the resulting network improves the approximation results.
机译:在本文中,描述了用于逼近函数的神经网络。隐藏节点的激活函数是径向基函数(RBF),其参数通过两阶段梯度下降策略来学习。为了提高网络性能,采用了一种新的增长的径向基函数-具有不同径向基函数的节点插入策略。由于其激活函数由不同的径向基函数组成的节点的选择性增长,该学习策略能够节省计算时间和存储空间。已经对学习能力进行了分析,并将净性能与其他方法进行了比较。结果表明,所得网络改善了近似结果。

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