Density Results by Deep Neural Network operators with Integer weights

IF 1.6 3区 数学 Q1 MATHEMATICS Mathematical Modelling and Analysis Pub Date : 2022-11-10 DOI:10.3846/mma.2022.15974
D. Costarelli
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引用次数: 3

Abstract

In the present paper, a new family of multi-layers (deep) neural network (NN) operators is introduced. Density results have been established in the space of continuous functions on [−1,1], with respect to the uniform norm. First, the case of the operators with two-layers is considered in detail, then the definition and the corresponding density results have been extended to the general case of multi-layers operators. All the above definitions allow us to prove approximation results by a constructive approach, in the sense that, for any given f all the weights, the thresholds, and the coefficients of the deep NN operators can be explicitly determined. Finally, examples of activation functions have been provided, together with graphical examples. The main motivation of this work resides in the aim to provide the corresponding multi-layers version of the well-known (shallow) NN operators, according to what is done in the applications with the construction of deep neural models.
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具有整数权值的深度神经网络算子的密度结果
本文介绍了一类新的多层(深度)神经网络算子。在[−1,1]上的连续函数空间中建立了关于一致范数的密度结果。首先详细考虑了两层算子的情况,然后将其定义和相应的密度结果推广到多层算子的一般情况。以上所有定义都允许我们通过建设性方法证明近似结果,在某种意义上,对于任何给定的f,深度神经网络算子的阈值和系数都可以显式确定。最后,提供了激活函数的示例以及图形示例。这项工作的主要动机在于,根据构建深度神经模型的应用中所做的工作,提供相应的多层版本的知名(浅)NN算子。
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来源期刊
CiteScore
2.80
自引率
5.60%
发文量
28
审稿时长
4.5 months
期刊介绍: Mathematical Modelling and Analysis publishes original research on all areas of mathematical modelling and analysis.
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