The construction and approximation of neural networks operators with Gaussian activation function∗
نویسندگان
چکیده
This paper studies the construction and approximation of neural network operators with a centered bell-shaped Gaussian activation function. Using a univariate Gaussian function a class of Cardaliaguet-Euvrard type network operators is constructed to approximate the continuous function, and the Jackson type theorems of the approximation and some discussions about the convergence are given. Furthermore, to approximate the multivariate function, a class of bivariate Cardaliaguet-Euvrard type network operators is introduced, and the corresponding estimates of the approximation rate are deduced. AMS subject classifications: 41A17, 41A25
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