Approximation problems in system identification with neural networks (Q1334039)
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scientific article; zbMATH DE number 640456
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Approximation problems in system identification with neural networks |
scientific article; zbMATH DE number 640456 |
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Approximation problems in system identification with neural networks (English)
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19 September 1994
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The capability of approximating continuous functions of several variables by neural nets is investigated. Starting from a result by Cybenko concerning the denseness of linear combinations of continuous sigmoidal functions in \(L^ p (K)\), the author finally proves -- in the framework of \(L^ p\)-Tauber-Wiener functions -- that by composition of some functions of one variable, one can approximate continuous functionals defined on compact \(L^ p (K)\), and continuous operators from compact \(L^ p (K_ 1)\) to \(L^ p (K_ 2)\).
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neural nets
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