Universal approximation using feedforward networks with non-sigmoid hidden layer activation functions

M. Stinchcombe, H. White
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引用次数: 286

Abstract

K.M. Hornik, M. Stinchcombe, and H. White (Univ. of California at San Diego, Dept. of Economics Discussion Paper, June 1988; to appear in Neural Networks) showed that multilayer feedforward networks with as few as one hidden layer, no squashing at the output layer, and arbitrary sigmoid activation function at the hidden layer are universal approximators: they are capable of arbitrarily accurate approximation to arbitrary mappings, provided sufficiently many hidden units are available. The present authors obtain identical conclusions but do not require the hidden-unit activation to be sigmoid. Instead, it can be a rather general nonlinear function. Thus, multilayer feedforward networks possess universal approximation capabilities by virtue of the presence of intermediate layers with sufficiently many parallel processors; the properties of the intermediate-layer activation function are not so crucial. In particular, sigmoid activation functions are not necessary for universal approximation.<>
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具有非s型隐层激活函数的前馈网络的通用逼近
K.M. Hornik, M. Stinchcombe和H. White(加州大学圣地亚哥分校,经济学系讨论论文,1988年6月);(出现在神经网络中)表明,只有一个隐藏层的多层前馈网络,在输出层没有压缩,在隐藏层有任意的s型激活函数是通用逼近器:它们能够任意精确地逼近任意映射,只要有足够多的隐藏单元可用。本文作者得到了相同的结论,但不要求隐藏单元激活是s型的。相反,它可以是一个相当一般的非线性函数。因此,多层前馈网络由于具有足够多的并行处理器的中间层的存在而具有通用逼近能力;中间层激活函数的性质并不是那么重要。特别地,s型激活函数对于普遍逼近来说是不必要的
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