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Universal approximation theorem for neural networks with inputs from a topological vector space

Vugar Ismailov

TL;DR

A universal approximation theorem is proved for TVS-FNNs, which demonstrates their capacity to approximate any continuous function defined on this expanded input space.

Abstract

We study feedforward neural networks with inputs from a topological vector space (TVS-FNNs). Unlike traditional feedforward neural networks, TVS-FNNs can process a broader range of inputs, including sequences, matrices, functions and more. We prove a universal approximation theorem for TVS-FNNs, which demonstrates their capacity to approximate any continuous function defined on this expanded input space.

Universal approximation theorem for neural networks with inputs from a topological vector space

TL;DR

A universal approximation theorem is proved for TVS-FNNs, which demonstrates their capacity to approximate any continuous function defined on this expanded input space.

Abstract

We study feedforward neural networks with inputs from a topological vector space (TVS-FNNs). Unlike traditional feedforward neural networks, TVS-FNNs can process a broader range of inputs, including sequences, matrices, functions and more. We prove a universal approximation theorem for TVS-FNNs, which demonstrates their capacity to approximate any continuous function defined on this expanded input space.
Paper Structure (26 equations)

This paper contains 26 equations.