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A Basic Course in Measure and Probability

A Basic Course in Measure and Probability

A Basic Course in Measure and Probability

Theory for Applications
Ross Leadbetter, University of North Carolina, Chapel Hill
Stamatis Cambanis, University of North Carolina, Chapel Hill
Vladas Pipiras, University of North Carolina, Chapel Hill
January 2014
Paperback
9781107652521

    Originating from the authors' own graduate course at the University of North Carolina, this material has been thoroughly tried and tested over many years, making the book perfect for a two-term course or for self-study. It provides a concise introduction that covers all of the measure theory and probability most useful for statisticians, including Lebesgue integration, limit theorems in probability, martingales, and some theory of stochastic processes. Readers can test their understanding of the material through the 300 exercises provided. The book is especially useful for graduate students in statistics and related fields of application (biostatistics, econometrics, finance, meteorology, machine learning, and so on) who want to shore up their mathematical foundation. The authors establish common ground for students of varied interests which will serve as a firm 'take-off point' for them as they specialize in areas that exploit mathematical machinery.

    • Based on extensive classroom experience
    • Gives students a firm grounding in the basics before they advance to more applied topics
    • Includes 300 tried and tested exercises

    Product details

    January 2014
    Paperback
    9781107652521
    374 pages
    228 × 151 × 16 mm
    0.6kg
    15 b/w illus. 300 exercises
    Available

    Table of Contents

    • Preface
    • Acknowledgements
    • 1. Point sets and certain classes of sets
    • 2. Measures: general properties and extension
    • 3. Measurable functions and transformations
    • 4. The integral
    • 5. Absolute continuity and related topics
    • 6. Convergence of measurable functions, Lp-spaces
    • 7. Product spaces
    • 8. Integrating complex functions, Fourier theory and related topics
    • 9. Foundations of probability
    • 10. Independence
    • 11. Convergence and related topics
    • 12. Characteristic functions and central limit theorems
    • 13. Conditioning
    • 14. Martingales
    • 15. Basic structure of stochastic processes
    • References
    • Index.