Fundamentals of Linear Algebra / by J.S. Chahal.

Chahal, J.S.
Call Number
512.897
Author
Chahal, J.S., author.
Title
Fundamentals of Linear Algebra / by J.S. Chahal.
Edition
First edition.
Physical Description
1 online resource (240 pages) : 17 illustrations, text file, PDF.
Series
Textbooks in Mathematics
Contents
Preface -- Advice to the Reader -- 1 Preliminaries -- What is Linear Algebra? -- Rudimentary Set Theory -- Cartesian Products -- Relations -- Concept of a Function -- Composite Functions -- Fields of Scalars -- Techniques for Proving Theorems -- 2 Matrix Algebra -- Matrix Operations -- Geometric Meaning of a Matrix Equation -- Systems of Linear Equation -- Inverse of a Matrix -- The Equation Ax=b -- Basic Applications -- 3 Vector Spaces -- The Concept of a Vector Space -- Subspaces -- The Dimension of a Vector Space -- Linear Independence -- Application of Knowing dim (V) -- Coordinates -- Rank of a Matrix -- 4 LinearMaps -- Linear Maps -- Properties of Linear Maps -- Matrix of a Linear Map -- Matrix Algebra and Algebra of Linear Maps -- Linear Functionals and Duality -- Equivalence and Similarity -- Application to Higher Order Differential Equations -- 5 Determinants -- Motivation -- Properties of Determinants -- Existence and Uniqueness of Determinant -- Computational Definition of Determinant -- Evaluation of Determinants -- Adjoint and Cramer's Rule -- 6 Diagonalization -- Motivation -- Eigenvalues and Eigenvectors -- Cayley-Hamilton Theorem -- 7 Inner Product Spaces -- Inner Product -- Fourier Series -- Orthogonal and Orthonormal Sets -- Gram-Schmidt Process -- Orthogonal Projections on Subspaces -- 8 Linear Algebra over Complex Numbers -- Algebra of Complex Numbers -- Diagonalization of Matrices with Complex Eigenvalues -- Matrices over Complex Numbers -- 9 Orthonormal Diagonalization -- Motivational Introduction -- Matrix Representation of a Quadratic Form -- Spectral Decompostion -- Constrained Optimization-Extrema of Spectrum -- Singular Value Decomposition (SVD) -- 10Selected Applications of Linear Algebra -- System of First Order Linear Differential Equations -- Multivariable Calculus -- Special Theory of Relativity -- Cryptography -- Solving Famous Problems from Greek Geometry -- Answers to Selected Numberical Problems -- Bibliography -- Index.
Summary
Fundamentals of Linear Algebra is like no other book on the subject. By following a natural and unified approach to the subject it has, in less than 250 pages, achieved a more complete coverage of the subject than books with more than twice as many pages. For example, the textbooks in use in the United States prove the existence of a basis only for finite dimensional vector spaces. This book proves it for any given vector space. ,With his experience in algebraic geometry and commutative algebra, the author defines the dimension of a vector space as its Krull dimension. By doing so, most of the facts about bases when the dimension is finite, are trivial consequences of this definition. To name one, the replacement theorem is no longer needed. It becomes obvious that any two bases of a finite dimensional vector space contain the same number of vectors. Moreover, this definition of the dimension works equally well when the geometric objects are nonlinear.,,Features:,,,Presents theories and applications in an attempt to raise expectations and outcomes,,,The subject of linear algebra is presented over arbitrary fields,,,Includes many non-trivial examples which address real-world problems,,,About the Author:,,Dr. J.S. Chahal is a professor of mathematics at Brigham Young University. He received his Ph.D. from Johns Hopkins University and after spending a couple of years at the University of Wisconsin as a post doc, he joined Brigham Young University as an assistant professor and has been there ever since. He specializes and has published a number of papers about number theory. For hobbies, he likes to travel and hike, the reason he accepted the position at Brigham Young University.
Added Author
Taylor and Francis.
Subject
MATHEMATICS / Applied.
determinants.
Engineering Applications.
Linear Transformations.
Martix Alegbra.
Matrices.
Vector Spaces.
ALGEBRAS, LINEAR.
Electronic books.
Multimedia
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$t Preface -- Advice to the Reader -- 1 Preliminaries  -- What is Linear Algebra? -- Rudimentary Set Theory -- Cartesian Products -- Relations -- Concept of a Function -- Composite Functions -- Fields of Scalars -- Techniques for Proving Theorems -- 2 Matrix Algebra  -- Matrix Operations -- Geometric Meaning of a Matrix Equation -- Systems of Linear Equation -- Inverse of a Matrix -- The Equation Ax=b -- Basic Applications -- 3 Vector Spaces  -- The Concept of a Vector Space -- Subspaces -- The Dimension of a Vector Space -- Linear Independence -- Application of Knowing dim (V) -- Coordinates -- Rank of a Matrix -- 4 LinearMaps  -- Linear Maps -- Properties of Linear Maps -- Matrix of a Linear Map -- Matrix Algebra and Algebra of Linear Maps -- Linear Functionals and Duality -- Equivalence and Similarity -- Application to Higher Order Differential Equations -- 5 Determinants  -- Motivation -- Properties of Determinants -- Existence and Uniqueness of Determinant -- Computational Definition of Determinant -- Evaluation of Determinants -- Adjoint and Cramer's Rule -- 6 Diagonalization  -- Motivation -- Eigenvalues and Eigenvectors -- Cayley-Hamilton Theorem -- 7 Inner Product Spaces  -- Inner Product -- Fourier Series -- Orthogonal and Orthonormal Sets -- Gram-Schmidt Process -- Orthogonal Projections on Subspaces -- 8 Linear Algebra over Complex Numbers  -- Algebra of Complex Numbers -- Diagonalization of Matrices with Complex Eigenvalues -- Matrices over Complex Numbers -- 9 Orthonormal Diagonalization -- Motivational Introduction -- Matrix Representation of a Quadratic Form -- Spectral Decompostion -- Constrained Optimization-Extrema of Spectrum -- Singular Value Decomposition (SVD) -- 10Selected Applications of Linear Algebra -- System of First Order Linear Differential Equations -- Multivariable Calculus -- Special Theory of Relativity -- Cryptography -- Solving Famous Problems from Greek Geometry -- Answers to Selected Numberical Problems -- Bibliography -- Index.
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$a Fundamentals of Linear Algebra is like no other book on the subject. By following a natural and unified approach to the subject it has, in less than 250 pages, achieved a more complete coverage of the subject than books with more than twice as many pages. For example, the textbooks in use in the United States prove the existence of a basis only for finite dimensional vector spaces. This book proves it for any given vector space. ,With his experience in algebraic geometry and commutative algebra, the author defines the dimension of a vector space as its Krull dimension. By doing so, most of the facts about bases when the dimension is finite, are trivial consequences of this definition. To name one, the replacement theorem is no longer needed. It becomes obvious that any two bases of a finite dimensional vector space contain the same number of vectors. Moreover, this definition of the dimension works equally well when the geometric objects are nonlinear.,,Features:,,,Presents theories and applications in an attempt to raise expectations and outcomes,,,The subject of linear algebra is presented over arbitrary fields,,,Includes many non-trivial examples which address real-world problems,,,About the Author:,,Dr. J.S. Chahal is a professor of mathematics at Brigham Young University. He received his Ph.D. from Johns Hopkins University and after spending a couple of years at the University of Wisconsin as a post doc, he joined Brigham Young University as an assistant professor and has been there ever since. He specializes and has published a number of papers about number theory. For hobbies, he likes to travel and hike, the reason he accepted the position at Brigham Young University.
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Summary
Fundamentals of Linear Algebra is like no other book on the subject. By following a natural and unified approach to the subject it has, in less than 250 pages, achieved a more complete coverage of the subject than books with more than twice as many pages. For example, the textbooks in use in the United States prove the existence of a basis only for finite dimensional vector spaces. This book proves it for any given vector space. ,With his experience in algebraic geometry and commutative algebra, the author defines the dimension of a vector space as its Krull dimension. By doing so, most of the facts about bases when the dimension is finite, are trivial consequences of this definition. To name one, the replacement theorem is no longer needed. It becomes obvious that any two bases of a finite dimensional vector space contain the same number of vectors. Moreover, this definition of the dimension works equally well when the geometric objects are nonlinear.,,Features:,,,Presents theories and applications in an attempt to raise expectations and outcomes,,,The subject of linear algebra is presented over arbitrary fields,,,Includes many non-trivial examples which address real-world problems,,,About the Author:,,Dr. J.S. Chahal is a professor of mathematics at Brigham Young University. He received his Ph.D. from Johns Hopkins University and after spending a couple of years at the University of Wisconsin as a post doc, he joined Brigham Young University as an assistant professor and has been there ever since. He specializes and has published a number of papers about number theory. For hobbies, he likes to travel and hike, the reason he accepted the position at Brigham Young University.
Contents
Preface -- Advice to the Reader -- 1 Preliminaries -- What is Linear Algebra? -- Rudimentary Set Theory -- Cartesian Products -- Relations -- Concept of a Function -- Composite Functions -- Fields of Scalars -- Techniques for Proving Theorems -- 2 Matrix Algebra -- Matrix Operations -- Geometric Meaning of a Matrix Equation -- Systems of Linear Equation -- Inverse of a Matrix -- The Equation Ax=b -- Basic Applications -- 3 Vector Spaces -- The Concept of a Vector Space -- Subspaces -- The Dimension of a Vector Space -- Linear Independence -- Application of Knowing dim (V) -- Coordinates -- Rank of a Matrix -- 4 LinearMaps -- Linear Maps -- Properties of Linear Maps -- Matrix of a Linear Map -- Matrix Algebra and Algebra of Linear Maps -- Linear Functionals and Duality -- Equivalence and Similarity -- Application to Higher Order Differential Equations -- 5 Determinants -- Motivation -- Properties of Determinants -- Existence and Uniqueness of Determinant -- Computational Definition of Determinant -- Evaluation of Determinants -- Adjoint and Cramer's Rule -- 6 Diagonalization -- Motivation -- Eigenvalues and Eigenvectors -- Cayley-Hamilton Theorem -- 7 Inner Product Spaces -- Inner Product -- Fourier Series -- Orthogonal and Orthonormal Sets -- Gram-Schmidt Process -- Orthogonal Projections on Subspaces -- 8 Linear Algebra over Complex Numbers -- Algebra of Complex Numbers -- Diagonalization of Matrices with Complex Eigenvalues -- Matrices over Complex Numbers -- 9 Orthonormal Diagonalization -- Motivational Introduction -- Matrix Representation of a Quadratic Form -- Spectral Decompostion -- Constrained Optimization-Extrema of Spectrum -- Singular Value Decomposition (SVD) -- 10Selected Applications of Linear Algebra -- System of First Order Linear Differential Equations -- Multivariable Calculus -- Special Theory of Relativity -- Cryptography -- Solving Famous Problems from Greek Geometry -- Answers to Selected Numberical Problems -- Bibliography -- Index.
Subject
MATHEMATICS / Applied.
determinants.
Engineering Applications.
Linear Transformations.
Martix Alegbra.
Matrices.
Vector Spaces.
ALGEBRAS, LINEAR.
Electronic books.
Multimedia