General nonlinear function neural network fitting algorithm based on CNN

Xintao Xu, Zhelong Jiang, Gang Chen, Zhigang Li, Guoliang Gong, Huaxiang Lu
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引用次数: 0

Abstract

This paper proposes a generic neural network fitting algorithm based on CNN for nonlinear functions that overcomes the challenges of a large number of nonlinear functions in terms of hardware deployment and computing circuit generality in diverse neural network models. The model takes advantage of the principle that functions have varying degrees of difficulty fitting in different spaces, mapping the input to high-dimensional space with 1x1 convolution, and utilizing CNN to extract features of nonlinear functions with its strong feature extraction ability in high-dimensional space. Furthermore, MaxPool and ReLU improve the ability of nonlinear fitting. When fitting Tanh, Sigmoid, and ELU activation functions with 16bit accuracy, the proposed algorithm has an average error of less than 0.0006, with a parameter size of 5.793 k.
基于CNN的一般非线性函数神经网络拟合算法
本文提出了一种基于CNN的非线性函数通用神经网络拟合算法,克服了大量非线性函数在不同神经网络模型中硬件部署和计算电路通用性方面的挑战。该模型利用函数在不同空间拟合困难程度不同的原理,用1x1卷积将输入映射到高维空间,利用CNN在高维空间中较强的特征提取能力提取非线性函数的特征。此外,MaxPool和ReLU提高了非线性拟合的能力。在以16位精度拟合Tanh、Sigmoid和ELU激活函数时,算法的平均误差小于0.0006,参数大小为5.793 k。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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