基于深度s型神经网络的分段光滑函数学习与逼近

IF 1.3 Q3 COMPUTER SCIENCE, THEORY & METHODS
Xia Liu
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引用次数: 0

摘要

构造用于函数逼近的神经网络是逼近理论和学习理论中一个经典而长久的课题。在本文中,我们将分别使用sigmoid函数来近似和学习分段光滑函数,构建一个具有三隐层的深度神经网络。特别地,我们证明了所构造的深度s型网在逼近参数可控但不饱和的分段光滑函数时可以达到最优逼近率。在学习理论中也可以得到类似的结果,即所构造的深度s型网络在学习分段光滑函数时也能实现最优学习率。以上两个结果体现了深度s型网的优势,为深度学习提供了理论评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning and approximating piecewise smooth functions by deep sigmoid neural networks
Constructing neural networks for function approximation is a classical and longstanding topic in approximation theory, so is it in learning theory. In this paper, we are going to construct a deep neural network with three hidden layers using sigmoid function to approximate and learn the piecewise smooth functions, respectively. In particular, we prove that the constructed deep sigmoid nets can reach the optimal approximation rate in approximating the piecewise smooth functions with controllable parameters but without saturation. Similar results can also be obtained in learning theory, that is, the constructed deep sigmoid nets can also realize the optimal learning rates in learning the piecewise smooth functions. The above two obtained results underlie the advantages of deep sigmoid nets and provide theoretical assessment for deep learning.
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