Smooth Logistic Real and Complex, Ordinary and Fractional Neural Network Approximations over Infinite Domains

Axioms Pub Date : 2024-07-09 DOI:10.3390/axioms13070462
G. Anastassiou
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Abstract

In this work, we study the univariate quantitative smooth approximations, including both real and complex and ordinary and fractional approximations, under different functions. The approximators presented here are neural network operators activated by Richard’s curve, a parametrized form of logistic sigmoid function. All domains used are obtained from the whole real line. The neural network operators used here are of the quasi-interpolation type: basic ones, Kantorovich-type ones, and those of the quadrature type. We provide pointwise and uniform approximations with rates. We finish with their applications.
无限域上的平滑逻辑实数和复数、普通和分数神经网络近似值
在这项工作中,我们研究了不同函数下的单变量定量平滑逼近,包括实数逼近和复数逼近,以及普通逼近和分数逼近。这里介绍的近似值是由理查德曲线激活的神经网络算子,理查德曲线是对数 sigmoid 函数的参数化形式。所有使用的域都是从整个实线中获得的。这里使用的神经网络算子属于准插值类型:基本算子、康托洛维奇类型算子和正交类型算子。我们提供了带速率的点逼近和均匀逼近。最后,我们将介绍它们的应用。
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