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Efficient incremental construction of RBF networks using quasi-gradient method

机译:使用准梯度法高效构建RBF网络

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摘要

Artificial Neural Networks have been found to be very efficient universal approximators. Single Layer Feedforward Networks (SLFN) are the most popular and easy to train. The neurons in these networks can use both sigmoidal functions and radial basis functions.(RBF) as activation functions. Both functions have been shown to work very efficiently. Sigmoidal networks are already very well described in the literature. This paper will focus on the construction of a SLFN architecture using RBF neurons. There are many algorithms that are used to construct or train networks to solve function approximation problems. In this paper, an algorithm which is a modification of the Incremental Extreme Learning Machine (I-ELM) family of algorithms is proposed. The proposed algorithm eliminates randomness in the learning process with respect to center positions and widths of the RBF neurons. To do this, the input with the highest error magnitude is saved during error calculation and then used as the center for the next incrementally added neuron. Then the radius of the new neuron is iteratively chosen using Nelder-Mead's Simplex method. This allows the universal approximation properties of I-ELM to be preserved while greatly reducing the sizes of the trained RBF networks. (C) 2014 Elsevier B.V. All rights reserved.
机译:已经发现人工神经网络是非常有效的通用近似器。单层前馈网络(SLFN)是最受欢迎且易于培训的。这些网络中的神经元可以同时使用S形函数和径向基函数(RBF)作为激活函数。这两个功能都显示出非常有效的工作。乙状结肠网络已经在文献中得到了很好的描述。本文将重点介绍使用RBF神经元构建SLFN架构。有许多算法用于构造或训练网络以解决函数逼近问题。本文提出了一种算法,它是对增量极限学习机(I-ELM)系列算法的改进。所提出的算法消除了学习过程中相对于RBF神经元的中心位置和宽度的随机性。为此,在误差计算期间会保存误差幅度最大的输入,然后将其用作下一个增量添加的神经元的中心。然后,使用Nelder-Mead的Simplex方法迭代选择新神经元的半径。这允许保留I-ELM的通用逼近特性,同时极大地减少了训练后的RBF网络的大小。 (C)2014 Elsevier B.V.保留所有权利。

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