Monotone approximation by quadratic neural network of functions in Lp spaces for p<1

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Abstract

Some researchers are interested in using the flexible and applicable properties of quadratic functions as activation functions for FNNs. We study the essential approximation rate of any Lebesgue-integrable monotone function by a neural network of quadratic activation functions. The simultaneous degree of essential approximation is also studied. Both estimates are proved to be within the second order of modulus of smoothness.

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Almurieb, H. A., & Bhaya, E. S. (2020). Monotone approximation by quadratic neural network of functions in Lp spaces for p<1. Iraqi Journal of Science, 61(4), 870–874. https://doi.org/10.24996/ijs.2020.61.4.20

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