Jürgen Braun
On Kolmogorov's Superposition Theorem and its Applications
A Nonlinear Model for Numerical Function Reconstruction from Discrete Data Sets in Higher Dimensions
Buch
We present a Regularization Network approach based on Kolmogorov's superposition theorem (KST) to reconstruct higher dimensional continuous functions from their function values on discrete data points. The ansatz is based on a new constructive proof of a version of the theorem. Additionally, the thesis gives a comprehensive overview on the various versions of KST that exist and its relation to well known approximation schemes and Neural Networks. The efficient representation of higher dimensional continuous functions as superposition of univariate continuous functions suggests the conjecture that in a reconstruction, the exponential dependenc…
Mehr
Beschreibung
We present a Regularization Network approach based on Kolmogorov's superposition theorem (KST) to reconstruct higher dimensional continuous functions from their function values on discrete data points. The ansatz is based on a new constructive proof of a version of the theorem. Additionally, the thesis gives a comprehensive overview on the various versions of KST that exist and its relation to well known approximation schemes and Neural Networks. The efficient representation of higher dimensional continuous functions as superposition of univariate continuous functions suggests the conjecture that in a reconstruction, the exponential dependency of the involved numerical costs on the dimensionality, the so-called curse of dimensionality, can be circumvented. However, this is not the case, since the involved univariate functions are either unknown or not smooth. Therefore, we develop a Regularization Network approach in a reproducing kernel Hilbert space setting such that the restriction of the underlying approximation spaces defines a nonlinear model for function reconstruction. Finally, a verification and analysis of the model is given by various numerical examples.
CHF 107.00
Preise inkl. MwSt. und Versandkosten (Portofrei ab CHF 40.00)
V105:
Folgt in ca. 15 Arbeitstagen
Produktdetails
- ISBN: 978-3-8381-1637-2
- EAN: 9783838116372
- Produktnummer: 37590821
- Verlag: Südwestdeutscher Verlag für Hochschulschriften
- Sprache: Englisch
- Erscheinungsjahr: 2010
- Seitenangabe: 192 S.
- Masse: H22.0 cm x B15.0 cm x D1.2 cm 304 g
- Abbildungen: Paperback
- Gewicht: 304
Über den Autor
Jürgen Braun, Dr. rer. nat., studied mathematics with emphasis onscientific computing at the University of Bonn. There, hereceived his diploma degree in mathematics and doctorate innatural sciences at the Institute for Numerical Simulation.During his postgraduate studies he worked as research assistant.
27 weitere Werke von Jürgen Braun:
A Nonlinear Model for Numerical Function Reconstruction from Discrete Data Sets in Higher Dimensions
Ebook (EPUB Format)
CHF 1.30
A Nonlinear Model for Numerical Function Reconstruction from Discrete Data Sets in Higher Dimensions
Ebook (EPUB Format)
CHF 170.00
A Nonlinear Model for Numerical Function Reconstruction from Discrete Data Sets in Higher Dimensions
Ebook (PDF Format)
CHF 170.00
Bewertungen
0 von 0 Bewertungen
Anmelden
Keine Bewertungen gefunden. Seien Sie der Erste und teilen Sie Ihre Erkenntnisse mit anderen.