Introduction to linear algebra
Language: English Publication details: USA: Wellesley - Cambridge Press, 2023. Edition: 6th edDescription: x, 430p.; 23cmsISBN: 9781733146678Subject(s): Vectors and matrices | Linear equations | Linear transformations | Linear algebra in optimizationDDC classification: 512.5 S77, 6Item type | Current library | Call number | Status | Date due | Barcode |
---|---|---|---|---|---|
![]() |
Dr. S. R. Ranganathan Library General Stacks | 512.5 S77, 6 (Browse shelf(Opens below)) | Available | 3134 |
Linear algebra now rivals or surpasses calculus in importance for people working in quantitative fields of all kinds: engineers, scientists, economists and business people. Gilbert Strang has taught linear algebra at MIT for more than 50 years and the course he developed has become a model for teaching around the world. His video lectures on MIT OpenCourseWare have been viewed over ten million times and his twelve textbooks are popular with readers worldwide. This sixth edition of Professor Strang's most popular book, Introduction to Linear Algebra, introduces the ideas of independent columns and the rank and column space of a matrix early on for a more active start. Then the book moves directly to the classical topics of linear equations, fundamental subspaces, least squares, eigenvalues and singular values – in each case expressing the key idea as a matrix factorization. The final chapters of this edition treat optimization and learning from data: the most active application of linear algebra today. Everything is explained thoroughly in Professor Strang's characteristic clear style. It is sure to delight and inspire the delight and inspire the next generation of learners.
The author is a world-renowned teacher of linear algebra who delivers the material in a clear and effective way that students appreciate
A new start introduces the key concepts of linear combinations and rank and column space earlier on
Features two new chapters on applications of linear algebra to vital modern problems of optimization and learning from data
Accompanies the author's phenomenally popular video lectures and comes with a companion website featuring further applications
Table of Contents:
1. Vectors and matrices
2. Solving linear equations
3. The four fundamental subspaces
4. Orthogonality
5. Determinants
6. Eigenvalues and eigenvectors
7. The singular value decomposition (SVD)
8. Linear transformations
9. Linear algebra in optimization
10. Learning from data
Appendix 1. The ranks of AB and A + B
Appendix 2. Matrix factorizations
Appendix 3. Counting parameters in the basic factorizations
Appendix 4. Codes and algorithms for numerical linear algebra
Appendix 5. The Jordan form of a square matrix
Appendix 6. Tensors
Appendix 7. The condition numbers of a matrix problem
Appendix 8. Markov matrices and Perron-Frobenius
Appendix 9. Elimination and factorization
Appendix 10. Computer graphics
Index of equations
Index of notations
Index.