A First Course in Random Matrix Theory
The real world is perceived and broken down as data, models and algorithms in the eyes of physicists and engineers. Data is noisy by nature and classical statistical tools have so far been successful in dealing with relatively smaller levels of randomness. The recent emergence of Big Data and the required computing power to analyse them have rendered classical tools outdated and insufficient. Tools such as random matrix theory and the study of large sample covariance matrices can efficiently process these big data sets and help make sense of modern, deep learning algorithms. Presenting an introductory calculus course for random matrices, the book focusses on modern concepts in matrix theory, generalising the standard concept of probabilistic independence to non-commuting random variables. Concretely worked out examples and applications to financial engineering and portfolio construction make this unique book an essential tool for physicists, engineers, data analysts, and economists.
- An up-to-date introduction to random matrix theory and free calculus
- Graphical illustrations and exercises based on real-life applications
- Comprehensive cover of topics on free calculus
Product details
December 2020Hardback
9781108488082
370 pages
250 × 175 × 22 mm
0.82kg
Available
Table of Contents
- Preface
- Part I. Classical Random Matrix Theory:
- 1. Deterministic Matrices
- 2. Wigner Ensemble and Semi-circle Law
- 3. More on Gaussian Matrices
- 4. Wishart Ensemble and Marcenko-Pastur Distribution
- 5. Joint Distribution of Eigenvalues
- 7. The Jacobi Ensemble
- Part II. Sums and Products of Random Matrices:
- 8. Addition of Random Variables and Brownian Motion
- 9. Dyson Brownian Motion
- 10. Addition of Large Random Matrices
- 11. Free Probabilities
- 12. Free Random Matrices
- 13. The Replica Method
- 14. Edge Eigenvalues and Outliers
- Part III. Applications:
- 15. Addition and Multiplication: Recipes and Examples
- 16. Products of Many Random Matrices
- 17. Sample Covariance Matrices
- 18. Bayesian Estimation
- 19. Eigenvector Overlaps and Rotationally Invariant Estimators
- 20. Applications to Finance
- Appendix A. Appendices: Mathematical Tools
- List of Symbols
- Index.