Probability

Davar Khoshnevisan

ISBN: 9780821891810 | Year: 2012 | Paperback | Pages: 240 | Language : English

Book Size: 180 x 240 mm | Territorial Rights: Restricted

Price: 1625.00

About the Book

This is a textbook for a one-semester graduate course in measure-theoretic probability theory, but with ample material to cover an ordinary year-long course at a more leisurely pace. Khoshnevisan’s approach is to develop the ideas that are absolutely central to modern probability theory, and to showcase them by presenting their various applications. As a result, a few of the familiar topics are replaced by interesting non-standard ones. The topics range from undergraduate probability and classical limit theorems to Brownian motion and elements of stochastic calculus. Throughout, the reader will find many exciting applications of probability theory and probabilistic reasoning. There are numerous exercises, ranging from the routine to the very difficult. Each chapter concludes with historical notes.

Contributors (Author(s), Editor(s), Translator(s), Illustrator(s) etc.)

Davar Khoshnevisan, University of Utah, Salt Lake City, UT

Table of Content

Preface
General Notation


Classical Probability
    Discrete Probability
    Conditional Probability
    Independence
    Discrete Distributions
    Absolutely Continuous Distributions
    Expectation and Variance
    Problems
    Notes


Bernoulli Trials
    The Classical Theorems
    Problems
    Notes

Measure Theory
    Measure Spaces
    LebesgueMeasure
    Completion
    Proof of Carath´eodory’s Theorem
    Problems
    Notes

Integration
    Measurable Functions
    The Abstract Integral
    Lp-Spaces
    Modes of Convergence
    Limit Theorems
    The Radon–Nikod´ym Theorem
    Problems
    Notes

Product Spaces
   Finite Products
   Infinite Products
   Complement: Proof of Kolmogorov’s Extension Theorem
    Problems
    Notes

Independence
    Random Variables and Distributions
    Independent Random Variables
    An Instructive Example
    Khintchine’s Weak Law of Large Numbers
    Kolmogorov’s Strong Law of Large Numbers
    Applications
    Problems
    Notes

The Central Limit Theorem
    Weak Convergence
    Weak Convergence and Compact-Support Functions
    Harmonic Analysis in Dimension One
    The Plancherel Theorem
    The 1-D Central Limit Theorem
    Complements to the CLT
    Problems
    Notes

Martingales
    Conditional Expectations
    Filtrations and Semi-Martingales
    Stopping Times and Optional Stopping
    Applications to RandomWalks
    Inequalities and Convergence
    Further Applications
    Problems
    Notes

BrownianMotion
    Gaussian Processes
    Wiener’s Construction: Brownian Motion on [0 ,1)
    Nowhere-Differentiability
    The Brownian Filtration and Stopping Times
    The StrongMarkov Property
    The Reflection Principle
    Problems
    Notes

Terminus: Stochastic Integration
    The Indefinite Itˆo Integral
    Continuous Martingales in L2(P)
    The Definite Itˆo Integral
    Quadratic Variation
    Itˆo’s Formula and Two Applications
    Problems
    Notes

Appendix
    Hilbert Spaces
    Fourier Series

Bibliography
Index

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