Pati Y C, Krishnaprasad P S
Dept. of Electr. Eng., Maryland Univ., College Park, MD.
IEEE Trans Neural Netw. 1993;4(1):73-85. doi: 10.1109/72.182697.
A representation of a class of feedforward neural networks in terms of discrete affine wavelet transforms is developed. It is shown that by appropriate grouping of terms, feedforward neural networks with sigmoidal activation functions can be viewed as architectures which implement affine wavelet decompositions of mappings. It is shown that the wavelet transform formalism provides a mathematical framework within which it is possible to perform both analysis and synthesis of feedforward networks. For the purpose of analysis, the wavelet formulation characterizes a class of mappings which can be implemented by feedforward networks as well as reveals an exact implementation of a given mapping in this class. Spatio-spectral localization properties of wavelets can be exploited in synthesizing a feedforward network to perform a given approximation task. Two synthesis procedures based on spatio-spectral localization that reduce the training problem to one of convex optimization are outlined.
本文提出了一种基于离散仿射小波变换的前馈神经网络表示方法。研究表明,通过对项进行适当分组,具有 sigmoid 激活函数的前馈神经网络可被视为实现映射仿射小波分解的架构。结果表明,小波变换形式提供了一个数学框架,在此框架内可以对前馈网络进行分析和综合。出于分析目的,小波公式表征了一类可由前馈网络实现的映射,同时也揭示了该类中给定映射的精确实现。在合成前馈网络以执行给定近似任务时,可以利用小波的时空谱定位特性。概述了两种基于时空谱定位的合成过程,它们将训练问题简化为凸优化问题之一。