Measure Theory and Filtering
The estimation of noisily observed states from a sequence of data has traditionally incorporated ideas from Hilbert spaces and calculus-based probability theory. As conditional expectation is the key concept, the correct setting for filtering theory is that of a probability space. Graduate engineers, mathematicians and those working in quantitative finance wishing to use filtering techniques will find in the first half of this book an accessible introduction to measure theory, stochastic calculus, and stochastic processes, with particular emphasis on martingales and Brownian motion. Exercises are included. The book then provides an excellent users' guide to filtering: basic theory is followed by a thorough treatment of Kalman filtering, including recent results which extend the Kalman filter to provide parameter estimates. These ideas are then applied to problems arising in finance, genetics and population modelling in three separate chapters, making this a comprehensive resource for both practitioners and researchers.
- Many non-statistics readers are put off the subject by rigorous theory; this book begins by explaining the basics to an outside audience
- Book develops into an excellent reference for engineers, signal processing researchers and anyone interested in filtering
- Contains exercises and three chapters outlining applications in mathematical finance, genetics and population modelling
Reviews & endorsements
Review of the hardback: '… useful to those students and scientists in signal processing, mathematical finance and genetics, wishing to incorporate measure-theoretic probability techniques into their predictions. It is also an excellent user's guide to filtering with interesting applications arising in difference arenas.' Journal of Applied Statistics
Product details
October 2012Paperback
9781107410718
270 pages
244 × 170 × 14 mm
0.44kg
Available
Table of Contents
- Part I. Theory:
- 1. Basic probability concepts
- 2. Stochastic processes
- 3. Stochastic calculus
- 4. Change of measures
- Part II. Applications:
- 5. Kalman filtering
- 6. Financial applications
- 7. A genetics model
- 8. Hidden populations.