Description

Book Synopsis
An introduction to stochastic processes through the use of R Introduction to Stochastic Processes with R is an accessible and well-balanced presentation of the theory of stochastic processes, with an emphasis on real-world applications of probability theory in the natural and social sciences.

Trade Review
"This text provides an excellent introduction to stochastic processes and their applications"...."Examples are plentiful and well chosen, and help to organize the material and to move it forward. Each section contains a good supply of exercises, both calculational and theoretical" Thomas Polaski, Mathematical Reviews, Sept 2017

Table of Contents

Preface xi

Acknowledgments xv

List of Symbols and Notation xvii

About the Companion Website xxi

1 Introduction and Review 1

1.1 Deterministic and Stochastic Models 1

1.2 What is a Stochastic Process? 5

1.3 Monte Carlo Simulation 9

1.4 Conditional Probability 10

1.5 Conditional Expectation 18

Exercises 34

2 Markov Chains: First Steps 40

2.1 Introduction 40

2.2 Markov Chain Cornucopia 42

2.3 Basic Computations 52

2.4 Long-Term Behavior—the Numerical Evidence 59

2.5 Simulation 65

2.6 Mathematical Induction* 68

Exercises 70

3 Markov Chains for the Long Term 76

3.1 Limiting Distribution 76

3.2 Stationary Distribution 80

3.3 Can you Find the Way to State a? 94

3.4 Irreducible Markov Chains 103

3.5 Periodicity 106

3.6 Ergodic Markov Chains 109

3.7 Time Reversibility 114

3.8 Absorbing Chains 119

3.9 Regeneration and the Strong Markov Property* 133

3.10 Proofs of Limit Theorems* 135

Exercises 144

4 Branching Processes 158

4.1 Introduction 158

4.2 Mean Generation Size 160

4.3 Probability Generating Functions 164

4.4 Extinction is Forever 168

Exercises 175

5 Markov Chain Monte Carlo 181

5.1 Introduction 181

5.2 Metropolis–Hastings Algorithm 187

5.3 Gibbs Sampler 197

5.4 Perfect Sampling* 205

5.5 Rate of Convergence: the Eigenvalue Connection* 210

5.6 Card Shuffling and Total Variation Distance* 212

Exercises 219

6 Poisson Process 223

6.1 Introduction 223

6.2 Arrival, Interarrival Times 227

6.3 Infinitesimal Probabilities 234

6.4 Thinning, Superposition 238

6.5 Uniform Distribution 243

6.6 Spatial Poisson Process 249

6.7 Nonhomogeneous Poisson Process 253

6.8 Parting Paradox 255

Exercises 258

7 Continuous-Time Markov Chains 265

7.1 Introduction 265

7.2 Alarm Clocks and Transition Rates 270

7.3 Infinitesimal Generator 273

7.4 Long-Term Behavior 283

7.5 Time Reversibility 294

7.6 Queueing Theory 301

7.7 Poisson Subordination 306

Exercises 313

8 Brownian Motion 320

8.1 Introduction 320

8.2 Brownian Motion and Random Walk 326

8.3 Gaussian Process 330

8.4 Transformations and Properties 334

8.5 Variations and Applications 345

8.6 Martingales 356

Exercises 366

9 A Gentle Introduction to Stochastic Calculus* 372

9.1 Introduction 372

9.2 Ito Integral 378

9.3 Stochastic Differential Equations 385

Exercises 397

A Getting Started with R 400

B Probability Review 421

B.1 Discrete Random Variables 422

B.2 Joint Distribution 424

B.3 Continuous Random Variables 426

B.4 Common Probability Distributions 428

B.5 Limit Theorems 439

B.6 Moment-Generating Functions 440

C Summary of Common Probability Distributions 443

D Matrix Algebra Review 445

D.1 Basic Operations 445

D.2 Linear System 447

D.3 Matrix Multiplication 448

D.4 Diagonal, Identity Matrix, Polynomials 448

D.5 Transpose 449

D.6 Invertibility 449

D.7 Block Matrices 449

D.8 Linear Independence and Span 450

D.9 Basis 451

D.10 Vector Length 451

D.11 Orthogonality 452

D.12 Eigenvalue, Eigenvector 452

D.13 Diagonalization 453

Answers to Selected Odd-Numbered Exercises 455

References 470

Index 475

Introduction to Stochastic Processes with R

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    A Hardback by Robert P. Dobrow

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      Publisher: John Wiley & Sons Inc
      Publication Date: 19/04/2016
      ISBN13: 9781118740651, 978-1118740651
      ISBN10: 1118740653
      Also in:
      Mathematics

      Description

      Book Synopsis
      An introduction to stochastic processes through the use of R Introduction to Stochastic Processes with R is an accessible and well-balanced presentation of the theory of stochastic processes, with an emphasis on real-world applications of probability theory in the natural and social sciences.

      Trade Review
      "This text provides an excellent introduction to stochastic processes and their applications"...."Examples are plentiful and well chosen, and help to organize the material and to move it forward. Each section contains a good supply of exercises, both calculational and theoretical" Thomas Polaski, Mathematical Reviews, Sept 2017

      Table of Contents

      Preface xi

      Acknowledgments xv

      List of Symbols and Notation xvii

      About the Companion Website xxi

      1 Introduction and Review 1

      1.1 Deterministic and Stochastic Models 1

      1.2 What is a Stochastic Process? 5

      1.3 Monte Carlo Simulation 9

      1.4 Conditional Probability 10

      1.5 Conditional Expectation 18

      Exercises 34

      2 Markov Chains: First Steps 40

      2.1 Introduction 40

      2.2 Markov Chain Cornucopia 42

      2.3 Basic Computations 52

      2.4 Long-Term Behavior—the Numerical Evidence 59

      2.5 Simulation 65

      2.6 Mathematical Induction* 68

      Exercises 70

      3 Markov Chains for the Long Term 76

      3.1 Limiting Distribution 76

      3.2 Stationary Distribution 80

      3.3 Can you Find the Way to State a? 94

      3.4 Irreducible Markov Chains 103

      3.5 Periodicity 106

      3.6 Ergodic Markov Chains 109

      3.7 Time Reversibility 114

      3.8 Absorbing Chains 119

      3.9 Regeneration and the Strong Markov Property* 133

      3.10 Proofs of Limit Theorems* 135

      Exercises 144

      4 Branching Processes 158

      4.1 Introduction 158

      4.2 Mean Generation Size 160

      4.3 Probability Generating Functions 164

      4.4 Extinction is Forever 168

      Exercises 175

      5 Markov Chain Monte Carlo 181

      5.1 Introduction 181

      5.2 Metropolis–Hastings Algorithm 187

      5.3 Gibbs Sampler 197

      5.4 Perfect Sampling* 205

      5.5 Rate of Convergence: the Eigenvalue Connection* 210

      5.6 Card Shuffling and Total Variation Distance* 212

      Exercises 219

      6 Poisson Process 223

      6.1 Introduction 223

      6.2 Arrival, Interarrival Times 227

      6.3 Infinitesimal Probabilities 234

      6.4 Thinning, Superposition 238

      6.5 Uniform Distribution 243

      6.6 Spatial Poisson Process 249

      6.7 Nonhomogeneous Poisson Process 253

      6.8 Parting Paradox 255

      Exercises 258

      7 Continuous-Time Markov Chains 265

      7.1 Introduction 265

      7.2 Alarm Clocks and Transition Rates 270

      7.3 Infinitesimal Generator 273

      7.4 Long-Term Behavior 283

      7.5 Time Reversibility 294

      7.6 Queueing Theory 301

      7.7 Poisson Subordination 306

      Exercises 313

      8 Brownian Motion 320

      8.1 Introduction 320

      8.2 Brownian Motion and Random Walk 326

      8.3 Gaussian Process 330

      8.4 Transformations and Properties 334

      8.5 Variations and Applications 345

      8.6 Martingales 356

      Exercises 366

      9 A Gentle Introduction to Stochastic Calculus* 372

      9.1 Introduction 372

      9.2 Ito Integral 378

      9.3 Stochastic Differential Equations 385

      Exercises 397

      A Getting Started with R 400

      B Probability Review 421

      B.1 Discrete Random Variables 422

      B.2 Joint Distribution 424

      B.3 Continuous Random Variables 426

      B.4 Common Probability Distributions 428

      B.5 Limit Theorems 439

      B.6 Moment-Generating Functions 440

      C Summary of Common Probability Distributions 443

      D Matrix Algebra Review 445

      D.1 Basic Operations 445

      D.2 Linear System 447

      D.3 Matrix Multiplication 448

      D.4 Diagonal, Identity Matrix, Polynomials 448

      D.5 Transpose 449

      D.6 Invertibility 449

      D.7 Block Matrices 449

      D.8 Linear Independence and Span 450

      D.9 Basis 451

      D.10 Vector Length 451

      D.11 Orthogonality 452

      D.12 Eigenvalue, Eigenvector 452

      D.13 Diagonalization 453

      Answers to Selected Odd-Numbered Exercises 455

      References 470

      Index 475

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