Aysu Ismayilova

2papers

2 Papers

NEOct 31, 2023
On the Kolmogorov neural networks

Aysu Ismayilova, Vugar Ismailov

In this paper, we show that the Kolmogorov two hidden layer neural network model with a continuous, discontinuous bounded or unbounded activation function in the second hidden layer can precisely represent continuous, discontinuous bounded and all unbounded multivariate functions, respectively.

LGApr 5, 2023
On the universal approximation property of radial basis function neural networks

Aysu Ismayilova, Muhammad Ismayilov

In this paper we consider a new class of RBF (Radial Basis Function) neural networks, in which smoothing factors are replaced with shifts. We prove under certain conditions on the activation function that these networks are capable of approximating any continuous multivariate function on any compact subset of the $d$-dimensional Euclidean space. For RBF networks with finitely many fixed centroids we describe conditions guaranteeing approximation with arbitrary precision.