Functional Analysis for Probability and Stochastic Processes
This text is designed both for students of probability and stochastic processes, and for students of functional analysis. For the reader not familiar with functional analysis a detailed introduction to necessary notions and facts is provided. However, this is not a straight textbook in functional analysis; rather, it presents some chosen parts of functional analysis that can help understand ideas from probability and stochastic processes. The subjects range from basic Hilbert and Banach spaces, through weak topologies and Banach algebras, to the theory of semigroups of bounded linear operators. Numerous standard and non-standard examples and exercises make the book suitable as a course textbook or for self-study.
- Numerous standard and non-standard examples and exercises make the book suitable for both a textbook for a course as well as for self-study
- Unique in content, range, structure and presentation
- Very detailed clear and careful proofs
Product details
August 2005Paperback
9780521539371
406 pages
229 × 153 × 28 mm
0.655kg
250 exercises
Available
Table of Contents
- Preface
- 1. Preliminaries, notations and conventions
- 2. Basic notions in functional analysis
- 3. Conditional expectation
- 4. Brownian motion and Hilbert spaces
- 5. Dual spaces and convergence of probability measures
- 6. The Gelfand transform and its applications
- 7. Semigroups of operators and Lévy processes
- 8. Markov processes and semigroups of operators
- 9. Appendixes
- References
- Index.