Self-organization neurons blocks networks [sic]

M. Valença, Teresa B Ludermir
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引用次数: 4

Abstract

Presents a new class of higher-order feedforward neural networks, called self-organized neuron block networks (SNBNs). SNBN networks are based on the inductive learning method (also called self-organization). These new networks are shown to uniformly approximate any continuous function with an arbitrary degree of accuracy. An SNBN provides a natural mechanism for incremental network growth, and we develop a constructive algorithm based on the inductive learning method for the network. Simulation results of forecasting, approximations of nonlinear functions and approximations of multivariate polynomials are given in order to highlight the capability of the network.
自组织神经元阻断网络
提出了一类新的高阶前馈神经网络,称为自组织神经元块网络(snbn)。SNBN网络基于归纳学习方法(也称为自组织)。这些新的网络被证明能以任意精度一致地逼近任何连续函数。SNBN为网络的增量增长提供了一种自然的机制,我们开发了一种基于归纳学习方法的网络构造算法。为了突出网络的能力,给出了预测、非线性函数逼近和多元多项式逼近的仿真结果。
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