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Matrix Theory: Basic Results and Techniques [Kõva köide]

  • Formaat: Hardback, 290 pages, kõrgus x laius x paksus: 234x156x17 mm, kaal: 1310 g, black & white illustrations
  • Sari: Universitext
  • Ilmumisaeg: 27-May-1999
  • Kirjastus: Springer-Verlag New York Inc.
  • ISBN-10: 0387986960
  • ISBN-13: 9780387986968
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  • Kõva köide
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  • Formaat: Hardback, 290 pages, kõrgus x laius x paksus: 234x156x17 mm, kaal: 1310 g, black & white illustrations
  • Sari: Universitext
  • Ilmumisaeg: 27-May-1999
  • Kirjastus: Springer-Verlag New York Inc.
  • ISBN-10: 0387986960
  • ISBN-13: 9780387986968
Teised raamatud teemal:
The aim of this book is to concisely present fundamental ideas, results, and techniques in linear algebra and mainly matrix theory. The book contains eight chapters covering various topics ranging from similarity and special types of matrices to Schur complements and matrix normality. Each chapter focuses on the results, techniques, and methods that are beautiful, interesting, and representative, followed by carefully selected problems. For many theorems several different proofs are given. The book can be used as a text or a supplement for a linear algebra and matrix theory class or seminar for senior or graduate students. The only prerequisites are a decent background in elementary linear algebra and calculus. The book can also serve as a reference for instructors and researchers in the fields of algebra, matrix analysis, operator theory, statistics, computer science, engineering, operations research, economics, and other fields.

This volume concisely presents fundamental ideas, results, and techniques in linear algebra and mainly matrix theory. Each chapter focuses on the results, techniques, and methods that are beautiful, interesting, and representative, followed by carefully selected problems. For many theorems several different proofs are given. The only prerequisites are a decent background in elementary linear algebra and calculus.
Preface vii
Frequently Used Notation and Terminology xi
Frequently Used Theorems xiii
Elementary Linear Algebra Review
1(28)
Vector Spaces
1(5)
Matrices
6(8)
Linear Transformations and Eigenvalues
14(8)
Inner Product Spaces
22(7)
Partitioned Matrices
29(30)
Elementary Operations of Partitioned Matrices
29(7)
The Determinant and Inverse of Partitioned Matrices
36(7)
The Inverse of a Sum
43(3)
The Rank of Product and Sum
46(5)
Eigenvalues of AB and BA
51(5)
The Continuity Argument
56(3)
Matrix Polynomials and Canonical Forms
59(34)
Commuting Matrices
59(5)
Matrix Decompositions
64(6)
Annihilating Polynomials of Matrices
70(4)
Jordan Canonical Forms
74(9)
The Matrices AT, A, A*, ATA, A*A, and AA
83(5)
Numerical Range
88(5)
Special Types of Matrices
93(38)
Idempotence, Nilpotence, Involution, and Projection
93(8)
Tridiagonal Matrices
101(5)
Circulant Matrices
106(5)
Vandermonde Matrices
111(7)
Hadamard Matrices
118(5)
Permutation and Doubly Stochastic Matrices
123(8)
Unitary Matrices and Contractions
131(28)
Properties of Unitary Matrices
131(6)
Real Orthogonal Matrices
137(5)
Metric Space and Contractions
142(6)
Contractions and Unitary Matrices
148(4)
The Unitary Similarity of Real Matrices
152(3)
A Trace Inequality of Unitary Matrices
155(4)
Positive Semidefinite Matrices
159(49)
Positive Semidefinite Matrices
159(7)
A Pair of Positive Semidefinite Matrices
166(9)
Partitioned Positive Semidefinite Matrices
175(9)
Schur Complements and Determinantal Inequalities
184(6)
The Kronecker Product and Hadamard Products
190(8)
Schur Complements and Hadamard Products
198(5)
The Cauchy-Schwarz and Kantorovich Inequalities
203(5)
Hermitian Matrices
208(32)
Hermitian Matrices
208(5)
The Product of Hermitian Matrices
213(6)
The Min-Max Theorem and Interlacing Theorem
219(8)
Eigenvalue and Singular Value Inequalities
227(8)
A Triangle Inequality for the Matrix (A*A) 1/2
235(5)
Normal Matrices
240(25)
Equivalent Conditions
240(11)
Normal Matrices with Zero and One Entries
251(4)
A Cauchy-Schwarz Type Inequality for Matrix (A*A) 1/2
255(5)
Majorization and Matrix Normality
260(5)
References 265(8)
Notation 273(2)
Index 275