Applications of nonlinear approximation for problems in learning theory and applied mathematics
Date Issued
May 1, 2020
Author(s)
Daws, Joseph Douglas Jr
Advisor(s)
Clayton Webster
Additional Advisor(s)
Vasilios Alexiades, Michael Berry, Abner Salgado
Abstract
A major pillar of approximation theory in establishing the ability of one class of functions to be represented by another. Establishing such a relationship often leads to efficient numerical approximation methods. In this work, several expressibility theorems are established and several novel numerical approximation techniques are also presented. Not only are these novel methods supported by the presented theory, but also, provided numerical experiments show that these novel methods may be applied to a wide range of applications from image compression to the solutions of high-dimensional PDE.
Degree
Doctor of Philosophy
Major
Mathematics
Comments
Portions of this document are under consideration for publication in the Proceedings of Machine Learning Research. Other portions are under consideration for publication in Signal Processing: Image Communication.
Embargo Date
May 15, 2021
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Name
utk.ir.td_13494.pdf
Size
9.48 MB
Format
Adobe PDF
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