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Estimations of error bounds for neural-network function approximators

机译:神经网络函数逼近器的误差范围估计

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摘要

Neural networks are being increasingly used for problems involving function approximation. However, a key limitation of neural methods is the lack of a measure of how much confidence can be placed in output estimates. In the last few years many authors have addressed this shortcoming from various angles, focusing primarily on predicting output bounds as a function of the trained network's characteristics, typically as defined by the Hessian matrix. In this paper the problem of the effect of errors or noise in the presented input vector is examined, and a method based on perturbation analysis of determining output bounds from the error in the input vector and the imperfections in the weight values after training is also presented and demonstrated.
机译:神经网络正越来越多地用于涉及函数逼近的问题。但是,神经方法的一个关键局限性是缺乏衡量可以在输出估计中放置多少置信度的度量。在最近几年中,许多作者从各个角度解决了该缺陷,主要集中在根据受训网络的特征(通常由Hessian矩阵定义)预测输出范围。本文研究了误差或噪声在输入向量中的影响问题,并提出了一种基于扰动分析的方法,该方法根据输入向量中的误差和训练后权重的不完美确定输出边界并演示了。

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