Description

Book Synopsis
* The book is written by a first-class, world-renown authority in probability and measure theory at a leading U.S. institution of higher education * The book has been class-tested at over 200 universities around the globe * Theory is first-and-foremost.

Trade Review

“Like the previous editions, this Anniversary edition will be well received by students of mathematics, statistics, economics, and a wide variety of disciplines that require a solid understanding of probability theory.” (Int. J. Microstructure and Materials Properties, 1 February 2013)



Table of Contents
FOREWORD xi

PREFACE xiii

Patrick Billingsley 1925–2011 xv

Chapter1 PROBABILITY 1

1. BOREL’S NORMAL NUMBER THEOREM, 1

The Unit Interval

The Weak Law of Large Numbers

The Strong Law of Large Numbers

Strong Law Versus Weak

Length

The Measure Theory of Diophantine Approximation*

2. PROBABILITY MEASURES, 18

Spaces

Assigning Probabilities

Classes of Sets

Probability Measures

Lebesgue Measure on the Unit Interval

Sequence Space*

Constructing s-Fields*

3. EXISTENCE AND EXTENSION, 39

Construction of the Extension

Uniqueness and the p? Theorem

Monotone Classes

Lebesgue Measure on the Unit Interval

Completeness

Nonmeasurable Sets

Two Impossibility Theorems*

4. DENUMERABLE PROBABILITIES, 53

General Formulas

Limit Sets

Independent Events

Subfields

The Borel-Cantelli Lemmas

The Zero-One Law

5. SIMPLE RANDOM VARIABLES, 72

Definition

Convergence of Random Variables

Independence

Existence of Independent Sequences

Expected Value

Inequalities

6. THE LAW OF LARGE NUMBERS, 90

The Strong Law

The Weak Law

Bernstein's Theorem

A Refinement of the Second Borel-Cantelli Lemma

7. GAMBLING SYSTEMS, 98

Gambler's Ruin

Selection Systems

Gambling Policies

Bold Play*

Timid Play*

8. MARKOV CHAINS, 117

Definitions

Higher-Order Transitions

An Existence Theorem

Transience and Persistence

Another Criterion for Persistence

Stationary Distributions

Exponential Convergence*

Optimal Stopping*

9. LARGE DEVIATIONS AND THE LAW OF THE ITERATED LOGARITHM, 154

Moment Generating Functions

Large Deviations

Chernoff's Theorem*

The Law of the Iterated Logarithm

Chapter2 MEASURE 167

10. GENERAL MEASURES, 167

Classes of Sets

Conventions Involving 8

Measures

Uniqueness

11. OUTER MEASURE, 174

Outer Measure

Extension

An Approximation Theorem

12. MEASURES IN EUCLIDEAN SPACE, 181

Lebesgue Measure

Regularity

Specifying Measures on the Line

Specifying Measures in Rk

Strange Euclidean Sets*

13. MEASURABLE FUNCTIONS AND MAPPINGS, 192

Measurable Mappings

Mappings into Rk

Limits and Measurability

Transformations of Measures

14. DISTRIBUTION FUNCTIONS, 198

Distribution Functions

Exponential Distributions

Weak Convergence

Convergence of Types*

Extremal Distributions*

Chapter3 INTEGRATION 211

15. THE INTEGRAL, 211

Definition

Nonnegative Functions

Uniqueness

16. PROPERTIES OF THE INTEGRAL, 218

Equalities and Inequalities

Integration to the Limit

Integration over Sets

Densities

Change of Variable

Uniform Integrability

Complex Functions

17. THE INTEGRAL WITH RESPECT TO LEBESGUE MEASURE, 234

The Lebesgue Integral on the Line

The Riemann Integral

The Fundamental Theorem of Calculus

Change of Variable

The Lebesgue Integral in Rk

Stieltjes Integrals

18. PRODUCT MEASURE AND FUBINI’S THEOREM, 245

Product Spaces

Product Measure

Fubini's Theorem

Integration by Parts

Products of Higher Order

19. THE Lp SPACES*, 256

Definitions

Completeness and Separability

Conjugate Spaces

Weak Compactness

Some Decision Theory

The Space L2

An Estimation Problem

Chapter4 RANDOM VARIABLES AND EXPECTED VALUES 271

20. RANDOM VARIABLES AND DISTRIBUTIONS, 271

Random Variables and Vectors

Subfields

Distributions

Multidimensional Distributions

Independence

Sequences of Random Variables

Convolution

Convergence in Probability

The Glivenko-Cantelli Theorem*

21. EXPECTED VALUES, 291

Expected Value as Integral

Expected Values and Limits

Expected Values and Distributions

Moments

Inequalities

Joint Integrals

Independence and Expected Value

Moment Generating Functions

22. SUMS OF INDEPENDENT RANDOM VARIABLES, 300

The Strong Law of Large Numbers

The Weak Law and Moment Generating Functions

Kolmogorov's Zero-One Law

Maximal Inequalities

Convergence of Random Series

Random Taylor Series*

23. THE POISSON PROCESS, 316

Characterization of the Exponential Distribution

The Poisson Process

The Poisson Approximation

Other Characterizations of the Poisson Process

Stochastic Processes

24. THE ERGODIC THEOREM*, 330

Measure-Preserving Transformations

Ergodicity

Ergodicity of Rotations

Proof of the Ergodic Theorem

The Continued-Fraction Transformation

Diophantine Approximation

Chapter5 CONVERGENCE OF DISTRIBUTIONS 349

25. WEAK CONVERGENCE, 349

Definitions

Uniform Distribution Modulo 1*

Convergence in Distribution

Convergence in Probability

Fundamental Theorems

Helly's Theorem

Integration to the Limit

26. CHARACTERISTIC FUNCTIONS, 365

Definition

Moments and Derivatives

Independence

Inversion and the Uniqueness Theorem

The Continuity Theorem

Fourier Series*

27. THE CENTRAL LIMIT THEOREM, 380

Identically Distributed Summands

The Lindeberg and Lyapounov Theorems

Dependent Variables*

28. INFINITELY DIVISIBLE DISTRIBUTIONS*, 394

Vague Convergence

The Possible Limits

Characterizing the Limit

29. LIMIT THEOREMS IN Rk, 402

The Basic Theorems

Characteristic Functions

Normal Distributions in Rk

The Central Limit Theorem

30. THE METHOD OF MOMENTS*, 412

The Moment Problem

Moment Generating Functions

Central Limit Theorem by Moments

Application to Sampling Theory

Application to Number Theory

Chapter6 DERIVATIVES AND CONDITIONAL PROBABILITY 425

31. DERIVATIVES ON THE LINE*, 425

The Fundamental Theorem of Calculus

Derivatives of Integrals

Singular Functions

Integrals of Derivatives

Functions of Bounded Variation

32. THE RADON–NIKODYM THEOREM, 446

Additive Set Functions

The Hahn Decomposition

Absolute Continuity and Singularity

The Main Theorem

33. CONDITIONAL PROBABILITY, 454

The Discrete Case

The General Case

Properties of Conditional Probability

Difficulties and Curiosities

Conditional Probability Distributions

34. CONDITIONAL EXPECTATION, 472

Definition

Properties of Conditional Expectation

Conditional Distributions and Expectations

Sufficient Subfields*

Minimum-Variance Estimation*

35. MARTINGALES, 487

Definition

Submartingales

Gambling

Functions of Martingales

Stopping Times

Inequalities

Convergence Theorems

Applications: Derivatives

Likelihood Ratios

Reversed Martingales

Applications: de Finetti's Theorem

Bayes Estimation

A Central Limit Theorem*

Chapter7 STOCHASTIC PROCESSES 513

36. KOLMOGOROV'S EXISTENCE THEOREM, 513

Stochastic Processes

Finite-Dimensional Distributions

Product Spaces

Kolmogorov's Existence Theorem

The Inadequacy of RT

A Return to Ergodic Theory

The HewittSavage Theorem*

37. BROWNIAN MOTION, 530

Definition

Continuity of Paths

Measurable Processes

Irregularity of Brownian Motion Paths

The Strong Markov Property

The Reflection Principle

Skorohod Embedding

Invariance*

38. NONDENUMERABLE PROBABILITIES, 558

Introduction

Definitions

Existence Theorems

Consequences of Separability*

APPENDIX 571

NOTES ON THE PROBLEMS 587

BIBLIOGRAPHY 617

INDEX 619

Probability and Measure

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      Publisher: John Wiley & Sons Inc
      Publication Date: 09/03/2012
      ISBN13: 9781118122372, 978-1118122372
      ISBN10: 1118122372
      Also in:
      Mathematics

      Description

      Book Synopsis
      * The book is written by a first-class, world-renown authority in probability and measure theory at a leading U.S. institution of higher education * The book has been class-tested at over 200 universities around the globe * Theory is first-and-foremost.

      Trade Review

      “Like the previous editions, this Anniversary edition will be well received by students of mathematics, statistics, economics, and a wide variety of disciplines that require a solid understanding of probability theory.” (Int. J. Microstructure and Materials Properties, 1 February 2013)



      Table of Contents
      FOREWORD xi

      PREFACE xiii

      Patrick Billingsley 1925–2011 xv

      Chapter1 PROBABILITY 1

      1. BOREL’S NORMAL NUMBER THEOREM, 1

      The Unit Interval

      The Weak Law of Large Numbers

      The Strong Law of Large Numbers

      Strong Law Versus Weak

      Length

      The Measure Theory of Diophantine Approximation*

      2. PROBABILITY MEASURES, 18

      Spaces

      Assigning Probabilities

      Classes of Sets

      Probability Measures

      Lebesgue Measure on the Unit Interval

      Sequence Space*

      Constructing s-Fields*

      3. EXISTENCE AND EXTENSION, 39

      Construction of the Extension

      Uniqueness and the p? Theorem

      Monotone Classes

      Lebesgue Measure on the Unit Interval

      Completeness

      Nonmeasurable Sets

      Two Impossibility Theorems*

      4. DENUMERABLE PROBABILITIES, 53

      General Formulas

      Limit Sets

      Independent Events

      Subfields

      The Borel-Cantelli Lemmas

      The Zero-One Law

      5. SIMPLE RANDOM VARIABLES, 72

      Definition

      Convergence of Random Variables

      Independence

      Existence of Independent Sequences

      Expected Value

      Inequalities

      6. THE LAW OF LARGE NUMBERS, 90

      The Strong Law

      The Weak Law

      Bernstein's Theorem

      A Refinement of the Second Borel-Cantelli Lemma

      7. GAMBLING SYSTEMS, 98

      Gambler's Ruin

      Selection Systems

      Gambling Policies

      Bold Play*

      Timid Play*

      8. MARKOV CHAINS, 117

      Definitions

      Higher-Order Transitions

      An Existence Theorem

      Transience and Persistence

      Another Criterion for Persistence

      Stationary Distributions

      Exponential Convergence*

      Optimal Stopping*

      9. LARGE DEVIATIONS AND THE LAW OF THE ITERATED LOGARITHM, 154

      Moment Generating Functions

      Large Deviations

      Chernoff's Theorem*

      The Law of the Iterated Logarithm

      Chapter2 MEASURE 167

      10. GENERAL MEASURES, 167

      Classes of Sets

      Conventions Involving 8

      Measures

      Uniqueness

      11. OUTER MEASURE, 174

      Outer Measure

      Extension

      An Approximation Theorem

      12. MEASURES IN EUCLIDEAN SPACE, 181

      Lebesgue Measure

      Regularity

      Specifying Measures on the Line

      Specifying Measures in Rk

      Strange Euclidean Sets*

      13. MEASURABLE FUNCTIONS AND MAPPINGS, 192

      Measurable Mappings

      Mappings into Rk

      Limits and Measurability

      Transformations of Measures

      14. DISTRIBUTION FUNCTIONS, 198

      Distribution Functions

      Exponential Distributions

      Weak Convergence

      Convergence of Types*

      Extremal Distributions*

      Chapter3 INTEGRATION 211

      15. THE INTEGRAL, 211

      Definition

      Nonnegative Functions

      Uniqueness

      16. PROPERTIES OF THE INTEGRAL, 218

      Equalities and Inequalities

      Integration to the Limit

      Integration over Sets

      Densities

      Change of Variable

      Uniform Integrability

      Complex Functions

      17. THE INTEGRAL WITH RESPECT TO LEBESGUE MEASURE, 234

      The Lebesgue Integral on the Line

      The Riemann Integral

      The Fundamental Theorem of Calculus

      Change of Variable

      The Lebesgue Integral in Rk

      Stieltjes Integrals

      18. PRODUCT MEASURE AND FUBINI’S THEOREM, 245

      Product Spaces

      Product Measure

      Fubini's Theorem

      Integration by Parts

      Products of Higher Order

      19. THE Lp SPACES*, 256

      Definitions

      Completeness and Separability

      Conjugate Spaces

      Weak Compactness

      Some Decision Theory

      The Space L2

      An Estimation Problem

      Chapter4 RANDOM VARIABLES AND EXPECTED VALUES 271

      20. RANDOM VARIABLES AND DISTRIBUTIONS, 271

      Random Variables and Vectors

      Subfields

      Distributions

      Multidimensional Distributions

      Independence

      Sequences of Random Variables

      Convolution

      Convergence in Probability

      The Glivenko-Cantelli Theorem*

      21. EXPECTED VALUES, 291

      Expected Value as Integral

      Expected Values and Limits

      Expected Values and Distributions

      Moments

      Inequalities

      Joint Integrals

      Independence and Expected Value

      Moment Generating Functions

      22. SUMS OF INDEPENDENT RANDOM VARIABLES, 300

      The Strong Law of Large Numbers

      The Weak Law and Moment Generating Functions

      Kolmogorov's Zero-One Law

      Maximal Inequalities

      Convergence of Random Series

      Random Taylor Series*

      23. THE POISSON PROCESS, 316

      Characterization of the Exponential Distribution

      The Poisson Process

      The Poisson Approximation

      Other Characterizations of the Poisson Process

      Stochastic Processes

      24. THE ERGODIC THEOREM*, 330

      Measure-Preserving Transformations

      Ergodicity

      Ergodicity of Rotations

      Proof of the Ergodic Theorem

      The Continued-Fraction Transformation

      Diophantine Approximation

      Chapter5 CONVERGENCE OF DISTRIBUTIONS 349

      25. WEAK CONVERGENCE, 349

      Definitions

      Uniform Distribution Modulo 1*

      Convergence in Distribution

      Convergence in Probability

      Fundamental Theorems

      Helly's Theorem

      Integration to the Limit

      26. CHARACTERISTIC FUNCTIONS, 365

      Definition

      Moments and Derivatives

      Independence

      Inversion and the Uniqueness Theorem

      The Continuity Theorem

      Fourier Series*

      27. THE CENTRAL LIMIT THEOREM, 380

      Identically Distributed Summands

      The Lindeberg and Lyapounov Theorems

      Dependent Variables*

      28. INFINITELY DIVISIBLE DISTRIBUTIONS*, 394

      Vague Convergence

      The Possible Limits

      Characterizing the Limit

      29. LIMIT THEOREMS IN Rk, 402

      The Basic Theorems

      Characteristic Functions

      Normal Distributions in Rk

      The Central Limit Theorem

      30. THE METHOD OF MOMENTS*, 412

      The Moment Problem

      Moment Generating Functions

      Central Limit Theorem by Moments

      Application to Sampling Theory

      Application to Number Theory

      Chapter6 DERIVATIVES AND CONDITIONAL PROBABILITY 425

      31. DERIVATIVES ON THE LINE*, 425

      The Fundamental Theorem of Calculus

      Derivatives of Integrals

      Singular Functions

      Integrals of Derivatives

      Functions of Bounded Variation

      32. THE RADON–NIKODYM THEOREM, 446

      Additive Set Functions

      The Hahn Decomposition

      Absolute Continuity and Singularity

      The Main Theorem

      33. CONDITIONAL PROBABILITY, 454

      The Discrete Case

      The General Case

      Properties of Conditional Probability

      Difficulties and Curiosities

      Conditional Probability Distributions

      34. CONDITIONAL EXPECTATION, 472

      Definition

      Properties of Conditional Expectation

      Conditional Distributions and Expectations

      Sufficient Subfields*

      Minimum-Variance Estimation*

      35. MARTINGALES, 487

      Definition

      Submartingales

      Gambling

      Functions of Martingales

      Stopping Times

      Inequalities

      Convergence Theorems

      Applications: Derivatives

      Likelihood Ratios

      Reversed Martingales

      Applications: de Finetti's Theorem

      Bayes Estimation

      A Central Limit Theorem*

      Chapter7 STOCHASTIC PROCESSES 513

      36. KOLMOGOROV'S EXISTENCE THEOREM, 513

      Stochastic Processes

      Finite-Dimensional Distributions

      Product Spaces

      Kolmogorov's Existence Theorem

      The Inadequacy of RT

      A Return to Ergodic Theory

      The HewittSavage Theorem*

      37. BROWNIAN MOTION, 530

      Definition

      Continuity of Paths

      Measurable Processes

      Irregularity of Brownian Motion Paths

      The Strong Markov Property

      The Reflection Principle

      Skorohod Embedding

      Invariance*

      38. NONDENUMERABLE PROBABILITIES, 558

      Introduction

      Definitions

      Existence Theorems

      Consequences of Separability*

      APPENDIX 571

      NOTES ON THE PROBLEMS 587

      BIBLIOGRAPHY 617

      INDEX 619

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