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引用次数: 5

摘要

在多层神经网络的背景下,研究了L个变量的实函数f在一小组样本点(x/sub 1/,…,x/sub M/)处的逼近问题,该问题仅以其值y/sub 1/,…,y/sub M/给出。利用希尔伯特空间的再现核理论,证明了这个问题是一个关于y/下标m/与函数f本身的线性模型的逆问题。考虑了非线性多层神经网络结构的最小均方训练准则,使其能够完全学习训练集。从函数重构的角度定义了神经网络的泛化特性,提出了最优泛化神经网络的概念。它是一种网络,它最小化根据函数空间中原始函数f与重构函数f/sub 1/之间的真实误差给出的准则,而不是仅仅最小化样本点上的误差。作为OGNN的一个例子,考虑了投影滤波(PF)准则,并引入了PFGNN。网络为两层非线性-线性型
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Optimally generalizing neural networks
The problem of approximating a real function f of L variables, given only in terms of its values y/sub 1/,. . .,y/sub M/ at a small set of sample points x/sub 1/,. . .,x/sub M/ in R/sup L/, is studied in the context of multilayer neural networks. Using the theory of reproducing kernels of Hilbert spaces, it is shown that this problem is the inverse of a linear model relating the values y/sub m/ to the function f itself. The authors consider the least-mean-square training criterion for nonlinear multilayer neural network architectures that learn the training set completely. The generalization property of a neural network is defined in terms of function reconstruction and the concept of the optimally generalizing neural network (OGNN) is proposed. It is a network that minimizes a criterion given in terms of the true error between the original function f and the reconstruction f/sub 1/ in the function space, instead of minimizing the error at the sample points only. As an example of the OGNN, a projection filter (PF) criterion is considered and the PFGNN is introduced. The network is of the two-layer nonlinear-linear type.<>
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Control of a robotic manipulating arm by a neural network simulation of the human cerebral and cerebellar cortical processes Neural network training using homotopy continuation methods A learning scheme of neural networks which improves accuracy and speed of convergence using redundant and diversified network structures The abilities of neural networks to abstract and to use abstractions Backpropagation based on the logarithmic error function and elimination of local minima
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