An efficient learning algorithm for function approximation with radial basis function networks

Yen-Jen Oyang, Shien-Ching Hwang
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引用次数: 10

Abstract

This paper proposes a novel learning algorithm for constructing function approximators with radial basis function (RBF) networks. In comparison with the existing learning algorithms, the proposed algorithm features lower time complexity for constructing the RBF network and is able to deliver the same level of accuracy. The time taken by the proposed algorithm to construct the RBF network is in the order of O(|S|), where S is the set of training samples. As far as the time complexity for predicting the function values of input vectors is concerned, the RBF network constructed with the proposed learning algorithm can complete the task in O(|T|), where T is the set of input vectors. Another important feature of the proposed learning algorithm is that the space complexity of the RBF network constructed is O(m|S|), where m is the dimension of the vector space in which the target function is defined.
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径向基函数网络函数逼近的一种高效学习算法
提出了一种基于径向基函数(RBF)网络构造函数逼近器的学习算法。与现有的学习算法相比,该算法具有较低的构建RBF网络的时间复杂度,并且能够提供相同水平的精度。本文算法构造RBF网络的时间为O(|S|)阶,其中S为训练样本集。就预测输入向量函数值的时间复杂度而言,使用本文提出的学习算法构建的RBF网络可以在O(|T|)内完成任务,其中T为输入向量集合。本文提出的学习算法的另一个重要特征是构建的RBF网络的空间复杂度为O(m|S|),其中m为定义目标函数所在向量空间的维数。
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