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Universal approximation using probabilistic neural networks with sigmoid activation functions

机译:普遍逼近使用SigMoid激活功能的概率神经网络

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In this paper we demonstrate that finite linear combinations of compositions of a fixed, univariate function and a set of affine functional can uniformly approximate any continuous function of n real variables with support in the unit hypercube; only mild conditions are imposed on the univariate function. Our results settle an open question about representability in the class of single bidden layer neural networks. In particular, we show that arbitrary decision regions can be arbitrarily well approximated by continuous feedforward neural networks with only a single internal, hidden layer and any continuous sigmoidal nonlinearity. The paper discusses approximation properties of other possible types of nonlinearities that might be implemented by artificial neural networks. The daily registration has N cases that each of the well-known stimulus-answer couples represents. The objective of this work is to develop a function that allows finding the vector of entrance variables t to the vector of exit variables P. F is any function, in this case the electric power consumption. Their modeling with Artificial Neural Network (ANN) is Multi a Perceptron Layer (PMC). Another form of modeling it is using Interpolation Algorithms (AI).
机译:在本文中,我们证明了固定,单变量功能和一组仿射功能的组合物的有限线性组合可以均匀地近似N真实变量的任何连续功能在单元HyperCube中的支持;仅对单变量函数施加温和条件。我们的成果在单个BIDED层神经网络类中解决了关于可见性的开放问题。特别地,我们表明任意决定区可以由连续的前馈神经网络的连续前馈神经网络进行任意地近似,只有单个内部,隐藏层和任何连续的乙状非线性。本文讨论了可能由人工神经网络实现的其他可能类型的非线性类型的近似性质。每日注册有N个案例,每个众所周知的刺激答案伴侣代表。这项工作的目的是开发一个函数,允许发现进入变量T的向量T向出口变量V的向量P. F是任何功能,在这种情况下,电力消耗。它们与人工神经网络(ANN)的建模是多A Perceptron层(PMC)。另一种建模形式使用插值算法(AI)。

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