
Analysis and Linear Algebra
The Singular Value Decomposition and Applications
James Bisgard(Author)
American Mathematical Society (Publisher)
Published on 30. June 2021
Book
Paperback/Softback
217 pages
978-1-4704-6332-8 (ISBN)
Description
This book provides an elementary analytically inclined journey to a fundamental result of linear algebra: the Singular Value Decomposition (SVD). SVD is a workhorse in many applications of linear algebra to data science. Four important applications relevant to data science are considered throughout the book: determining the subspace that ""best'' approximates a given set (dimension reduction of a data set); finding the ""best'' lower rank approximation of a given matrix (compression and general approximation problems); the Moore-Penrose pseudo-inverse (relevant to solving least squares problems); and the orthogonal Procrustes problem (finding the orthogonal transformation that most closely transforms a given collection to a given configuration), as well as its orientation-preserving version.
The point of view throughout is analytic. Readers are assumed to have had a rigorous introduction to sequences and continuity. These are generalized and applied to linear algebraic ideas. Along the way to the SVD, several important results relevant to a wide variety of fields (including random matrices and spectral graph theory) are explored: the Spectral Theorem; minimax characterizations of eigenvalues; and eigenvalue inequalities. By combining analytic and linear algebraic ideas, readers see seemingly disparate areas interacting in beautiful and applicable ways.
The point of view throughout is analytic. Readers are assumed to have had a rigorous introduction to sequences and continuity. These are generalized and applied to linear algebraic ideas. Along the way to the SVD, several important results relevant to a wide variety of fields (including random matrices and spectral graph theory) are explored: the Spectral Theorem; minimax characterizations of eigenvalues; and eigenvalue inequalities. By combining analytic and linear algebraic ideas, readers see seemingly disparate areas interacting in beautiful and applicable ways.
More details
Series
Language
English
Place of publication
Providence
United States
Target group
Professional and scholarly
Dimensions
Height: 216 mm
Width: 140 mm
Weight
288 gr
ISBN-13
978-1-4704-6332-8 (9781470463328)
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Schweitzer Classification
Person
James Bisgard, Central Washington University, Ellensburg, WA
Content
Introduction
Linear algebra and normed vector spaces
Main tools
The spectral theorem
The singular value decomposition
Applications revisited
A glimpse towards infinite dimensions
Bibliography
Index of notation
Index
Linear algebra and normed vector spaces
Main tools
The spectral theorem
The singular value decomposition
Applications revisited
A glimpse towards infinite dimensions
Bibliography
Index of notation
Index