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Stochastic Processes

Stochastic Processes

Stochastic Processes

Theory for Applications
Robert G. Gallager, Massachusetts Institute of Technology
December 2013
Hardback
9781107039759

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£67.99
GBP
Hardback
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eBook

    This definitive textbook provides a solid introduction to discrete and continuous stochastic processes, tackling a complex field in a way that instils a deep understanding of the relevant mathematical principles, and develops an intuitive grasp of the way these principles can be applied to modelling real-world systems. It includes a careful review of elementary probability and detailed coverage of Poisson, Gaussian and Markov processes with richly varied queuing applications. The theory and applications of inference, hypothesis testing, estimation, random walks, large deviations, martingales and investments are developed. Written by one of the world's leading information theorists, evolving over twenty years of graduate classroom teaching and enriched by over 300 exercises, this is an exceptional resource for anyone looking to develop their understanding of stochastic processes.

    • Requires a minimum of mathematical prerequisites beyond probability theory, and introduces new topics as needed
    • Strongly geared towards the real-world application of the theory, without sacrificing either mathematical understanding or everyday practicality
    • Relevant to a broad range of applications within engineering, operations research, physics, economics, biology and finance

    Product details

    December 2013
    Hardback
    9781107039759
    553 pages
    253 × 181 × 31 mm
    1.2kg
    125 b/w illus. 305 exercises
    Available

    Table of Contents

    • 1. Introduction and review of probability
    • 2. Poisson processes
    • 3. Gaussian random vectors and processes
    • 4. Finite-state Markov chains
    • 5. Renewal processes
    • 6. Countable-state Markov chains
    • 7. Markov processes with countable state spaces
    • 8. Detection, decisions, and hypothesis testing
    • 9. Random walks, large deviations, and martingales
    • 10. Estimation.