Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition

Cover of Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition by Haruo Yanai
Author: Haruo Yanai
Year: 2013
Language: en
Edition: 2011
Pages: 236
ISBN-13: 9781461428596
Dimensions:
Height: 9.25 Inches
Length: 6.1 Inches
Weight: 1.00089866948 Pounds
Width: 0.56 Inches
Dewey Decimal: 519.5354
Editorial overview Touché

“Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition” by Haruo Yanai is a comprehensive exploration of key mathematical concepts published by Springer New York on May 28, 2013. This edition spans 236 pages and is presented in English. The book delves into projections and singular value decomposition (SVD), essential for understanding multivariate analysis, particularly in the context of regression analysis and principal component analysis.

Readers will find a systematic and in-depth discussion of projection matrices and generalized inverse matrices, emphasizing their definitions and applications within linear transformations of finite-dimensional vector spaces. The text aims to clarify how these mathematical tools can decompose vector spaces into direct-sum subspaces, making it a valuable resource for researchers, practitioners, and students in fields such as mathematics, statistics, engineering, and biostatistics.


Official synopsis Publisher

Aside from distribution theory, projections and the singular value decomposition (SVD) are the two most important concepts for understanding the basic mechanism of multivariate analysis. The former underlies the least squares estimation in regression analysis, which is essentially a projection of one subspace onto another, and the latter underlies principal component analysis, which seeks to find a subspace that captures the largest variability in the original space.

This book is about projections and SVD. A thorough discussion of generalized inverse (g-inverse) matrices is also given because it is closely related to the former. The book provides systematic and in-depth accounts of these concepts from a unified viewpoint of linear transformations finite dimensional vector spaces. More specially, it shows that projection matrices (projectors) and g-inverse matrices can be defined in various ways so that a vector space is decomposed into a direct-sum of (disjoint) subspaces. Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition will be useful for researchers, practitioners, and students in applied mathematics, statistics, engineering, behaviormetrics, and other fields.

FAQ
What is “Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition” about?
This page includes the available description and bibliographic details for “Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition” by Haruo Yanai. Synopsis preview: Aside from distribution theory, projections and the singular value decomposition (SVD) are the two most important concepts for understanding the basic mechanism of multivariate analysis. The former underlies the least sq…
Who is the author of “Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition”?
“Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition” is credited to Haruo Yanai.
When was “Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition” published?
Publisher: Springer New York. Year: 2013.
What is the ISBN for “Projection Matrices, Generalized Inverse Matrices, and Singular Value Decomposition”?
ISBN-13: 9781461428596.
What are the book details (language, pages, edition)?
Language: en. Pages: 236. Edition: 2011.

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