量化k维复值函数非线性的度量

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Larry C. Llewellyn, M. Grimaila, D. Hodson, Scott Graham
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引用次数: 0

摘要

建模和仿真是研究现代系统的系统行为动力学的一种行之有效的方法。我们的研究重点是评估神经网络近似多元、非线性、复值函数的能力。为了评估神经网络近似作为非线性函数的精度和性能,需要量化复值函数中NL的数量。在本文中,我们引入了一个度量来量化多维复值函数中的NL。该度规是将实值NL度规扩展到k维复域。度量是灵活的,因为它使用离散的输入-输出数据对,而不是需要封闭形式的连续表示来计算函数的NL。度量是通过生成函数的最佳拟合最小二乘解(LSS)线性k维超平面来计算的;计算超平面与待求函数之差的L2范数;将结果缩放到0到1之间的值。这个度量很容易理解,可以推广到多个维度,并且还有一个额外的好处,那就是它不需要对被求值的函数进行封闭形式的连续表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A metric for quantifying nonlinearity in k-dimensional complex-valued functions
Modeling and simulation is a proven cost-efficient means for studying the behavioral dynamics of modern systems of systems. Our research is focused on evaluating the ability of neural networks to approximate multivariate, nonlinear, complex-valued functions. In order to evaluate the accuracy and performance of neural network approximations as a function of nonlinearity (NL), it is required to quantify the amount of NL present in the complex-valued function. In this paper, we introduce a metric for quantifying NL in multi-dimensional complex-valued functions. The metric is an extension of a real-valued NL metric into the k-dimensional complex domain. The metric is flexible as it uses discrete input–output data pairs instead of requiring closed-form continuous representations for calculating the NL of a function. The metric is calculated by generating a best-fit, least-squares solution (LSS) linear k-dimensional hyperplane for the function; calculating the L2 norm of the difference between the hyperplane and the function being evaluated; and scaling the result to yield a value between zero and one. The metric is easy to understand, generalizable to multiple dimensions, and has the added benefit that it does not require a closed-form continuous representation of the function being evaluated.
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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