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Some Comparisons of Model Complexity in Linear and Neural-Network Approximation

机译:线性和神经网络逼近中模型复杂度的一些比较

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摘要

Capabilities of linear and neural-network models are compared from the point of view of requirements on the growth of model complexity with an increasing accuracy of approximation. Upper bounds on worst-case errors in approximation by neural networks are compared with lower bounds on these errors in linear approximation. The bounds are formulated in terms of singular numbers of certain operators induced by computational units and high-dimensional volumes of the domains of the functions to be approximated.
机译:从对模型复杂性增长的要求的角度出发,以越来越高的逼近精度比较了线性和神经网络模型的能力。将神经网络近似的最坏情况误差的上限与线性近似中的这些误差的下限进行比较。根据由计算单元和要近似的函数的域的高维体积引起的某些算子的奇数来表示范围。

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