Numerical Linear Algebra
eBook - PDF

Numerical Linear Algebra

  1. 121 pages
  2. English
  3. PDF
  4. Available on iOS & Android
eBook - PDF

Numerical Linear Algebra

Book details
Table of contents
Citations

About This Book

This is a well written comprehensive book about Numerical Linear Algebra

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Information

Year
2014
ISBN
9788132341963

Table of contents

  1. Cover
  2. Table of Contents
  3. Chapter 1 - Matrix Decomposition
  4. Chapter 2 - Sparse Matrix
  5. Chapter 3 - Arnoldi Iteration
  6. Chapter 4 - Cholesky Decomposition
  7. Chapter 5 - Circulant Matrix
  8. Chapter 6 - Conjugate Gradient Method
  9. Chapter 7 - Derivation of the Conjugate Gradient Method
  10. Chapter 8 - Eigenvalue Algorithm
  11. Chapter 9 - Gaussian Elimination
  12. Chapter 10 - Gauss–Seidel Method
  13. Chapter 11 - Generalized Minimal Residual Method
  14. Chapter 12 - Givens Rotation
  15. Chapter 13 - Inverse Iteration
  16. Chapter 14 - Jacobi Eigenvalue Algorithm
  17. Chapter 15 - Jacobi Method
  18. Chapter 16 - Kernel (Matrix)
  19. Chapter 17 - Linear Least Squares (Mathematics)