用柯尔莫哥洛夫叠加法分析连续函数的普遍逼近方法

Gorchakov Andrei, M. Vyacheslav
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引用次数: 3

摘要

Kolmogorov和Arnold证明了任何实数连续多变量有界函数都可以表示为单变量函数和加法的叠加。在Neht-Nielsen的后续工作中,研究表明这种特定类型的叠加可以被解释为两层前向神经网络。这种叠加也可用作多变量函数的普遍近似。本文研究了由Sprecher提出并经Koppen修正的Kolmogorov叠加的一种数值实现变体。此外,将第一层的函数视为空间填充曲线(Peano曲线)的生成器。通过数值实验研究了由Sprecher提出并由Koppen修正的Kolmogorov叠加的数值实现的多变量函数逼近的精度,以及该叠加的简化版本和填充曲线方法。对比分析表明,采用空间填充曲线法获得的效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of approaches to the universal approximation of a continuous function using Kolmogorov’s superposition
Kolmogorov and Arnold proved that any real continuous bounded function of many variables can be represented as a superposition of functions of one variable and addition. In subsequent works by Neht-Nielsen, it was shown that such a specific type of superposition can be interpreted as a two-layer forward neural network. Such a superposition can also be used as a universal approximation of the function of many variables. In the work, one of the variants of numerical implementation of Kolmogorov’s superposition, proposed by Sprecher and modified by Koppen, was investigated. In addition, the functions of the first layer were considered as a generator of space-filling curves (Peano curves). Numerical experiments were conducted to study the accuracy of the approximation of the function of many variables for the numerical implementation of Kolmogorov’s superposition, proposed by Sprecher and modified by Koppen, for a simplified version of this superposition and for an approach using filling curves. A comparative analysis showed that the best results are obtained using space-filling curves.
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