Description

Book Synopsis
Bayesian Analysis of Stochastic Process Models provides analysis of stochastic processes from a Bayesian perspective with coverage of the main classes of stochastic processing, including modeling, computational, inference, prediction, decision-making, and important applied models based on stochastic processes.

Table of Contents
Preface

PART ONE BASIC CONCEPTS AND TOOLS

1 Stochastic Processes 11

1.1 Introduction 11

1.2 Key Concepts in Stochastic Processes 11

1.3 Main Classes of Stochastic Processes 16

1.4 Inference, Prediction and Decision Making 21

1.5 Discussion 23

2 Bayesian Analysis 27

2.1 Introduction 27

2.2 Bayesian Statistics 28

2.3 Bayesian Decision Analysis 37

2.4 Bayesian Computation 39

2.5 Discussion 51

PART TWO MODELS

3 Discrete Time Markov Chains 61

3.1 Introduction 61

3.2 Important Markov Chain Models 62

3.3 Inference for First Order Chains 66

3.4 Special Topics 76

3.5 Case Study: Wind Directions at Gijon 87

3.6 Markov Decision Processes 94

3.7 Discussion 97

4 Continuous Time Markov Chains and Extensions 105

4.1 Introduction 105

4.2 Basic Setup and Results 106

4.3 Inference and Prediction for CTMCs 108

4.4 Case Study: Hardware Availability through CTMCs 112

4.5 Semi-Markovian Processes 118

4.6 Decision Making with Semi-Markovian Decision Processes 122

4.7 Discussion 128

5 Poisson Processes and Extensions 133

5.1 Introduction 133

5.2 Basics on Poisson Processes 134

5.3 Homogeneous Poisson Processes 138

5.4 Nonhomogeneous Poisson Processes 147

5.5 Compound Poisson Processes 153

5.6 Further Extensions of Poisson Processes 154

5.7 Case Study: Earthquake Occurrences 157

5.8 Discussion 162

6 Continuous Time Continuous Space Processes 169

6.1 Introduction 169

6.2 Gaussian Processes 170

6.3 Brownian Motion and Fractional Brownian Motion 174

6.4 Di®usions 181

6.5 Case Study: Prey-predator Systems 184

6.6 Discussion 190

PART THREE APPLICATIONS

7 Queueing Analysis 201

7.1 Introduction 201

7.2 Basic Queueing Concepts 201

7.3 The Main Queueing Models 204

7.4 Inference for Queueing Systems 208

7.5 Inference for M=M=1 Systems 209

7.6 Inference for Non Markovian Systems 220

7.7 Decision Problems in Queueing Systems 229

7.8 Case Study: Optimal Number of Beds in a Hospital 230

7.9 Discussion 235

8 Reliability 245

8.1 Introduction 245

8.2 Basic Reliability Concepts 246

8.3 Renewal Processes 249

8.4 Poisson Processes 251

8.5 Other Processes 259

8.6 Maintenance 262

8.7 Case Study: Gas Escapes 263

8.8 Discussion 271

9 Discrete Event Simulation 279

9.1 Introduction 279

9.2 Discrete Event Simulation Methods 280

9.3 A Bayesian View of DES 283

9.4 Case Study: A G=G=1 Queueing System 286

9.5 Bayesian Output Analysis 288

9.6 Simulation and Optimization 292

9.7 Discussion 294

10 Risk Analysis 301

10.1 Introduction 301

10.2 Risk Measures 302

10.3 Ruin Problems 316

10.4 Case Study: Ruin Probability Estimation 320

10.5 Discussion 327

Appendix A Main Distributions 337

Appendix B Generating Functions and the Laplace-Stieltjes Transform 347

Index

Bayesian Analysis of Stochastic Process Models

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    A Hardback by David Insua, Fabrizio Ruggeri, Mike Wiper

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      View other formats and editions of Bayesian Analysis of Stochastic Process Models by David Insua

      Publisher: John Wiley & Sons Inc
      Publication Date: 30/03/2012
      ISBN13: 9780470744536, 978-0470744536
      ISBN10: 0470744537
      Also in:
      Mathematics

      Description

      Book Synopsis
      Bayesian Analysis of Stochastic Process Models provides analysis of stochastic processes from a Bayesian perspective with coverage of the main classes of stochastic processing, including modeling, computational, inference, prediction, decision-making, and important applied models based on stochastic processes.

      Table of Contents
      Preface

      PART ONE BASIC CONCEPTS AND TOOLS

      1 Stochastic Processes 11

      1.1 Introduction 11

      1.2 Key Concepts in Stochastic Processes 11

      1.3 Main Classes of Stochastic Processes 16

      1.4 Inference, Prediction and Decision Making 21

      1.5 Discussion 23

      2 Bayesian Analysis 27

      2.1 Introduction 27

      2.2 Bayesian Statistics 28

      2.3 Bayesian Decision Analysis 37

      2.4 Bayesian Computation 39

      2.5 Discussion 51

      PART TWO MODELS

      3 Discrete Time Markov Chains 61

      3.1 Introduction 61

      3.2 Important Markov Chain Models 62

      3.3 Inference for First Order Chains 66

      3.4 Special Topics 76

      3.5 Case Study: Wind Directions at Gijon 87

      3.6 Markov Decision Processes 94

      3.7 Discussion 97

      4 Continuous Time Markov Chains and Extensions 105

      4.1 Introduction 105

      4.2 Basic Setup and Results 106

      4.3 Inference and Prediction for CTMCs 108

      4.4 Case Study: Hardware Availability through CTMCs 112

      4.5 Semi-Markovian Processes 118

      4.6 Decision Making with Semi-Markovian Decision Processes 122

      4.7 Discussion 128

      5 Poisson Processes and Extensions 133

      5.1 Introduction 133

      5.2 Basics on Poisson Processes 134

      5.3 Homogeneous Poisson Processes 138

      5.4 Nonhomogeneous Poisson Processes 147

      5.5 Compound Poisson Processes 153

      5.6 Further Extensions of Poisson Processes 154

      5.7 Case Study: Earthquake Occurrences 157

      5.8 Discussion 162

      6 Continuous Time Continuous Space Processes 169

      6.1 Introduction 169

      6.2 Gaussian Processes 170

      6.3 Brownian Motion and Fractional Brownian Motion 174

      6.4 Di®usions 181

      6.5 Case Study: Prey-predator Systems 184

      6.6 Discussion 190

      PART THREE APPLICATIONS

      7 Queueing Analysis 201

      7.1 Introduction 201

      7.2 Basic Queueing Concepts 201

      7.3 The Main Queueing Models 204

      7.4 Inference for Queueing Systems 208

      7.5 Inference for M=M=1 Systems 209

      7.6 Inference for Non Markovian Systems 220

      7.7 Decision Problems in Queueing Systems 229

      7.8 Case Study: Optimal Number of Beds in a Hospital 230

      7.9 Discussion 235

      8 Reliability 245

      8.1 Introduction 245

      8.2 Basic Reliability Concepts 246

      8.3 Renewal Processes 249

      8.4 Poisson Processes 251

      8.5 Other Processes 259

      8.6 Maintenance 262

      8.7 Case Study: Gas Escapes 263

      8.8 Discussion 271

      9 Discrete Event Simulation 279

      9.1 Introduction 279

      9.2 Discrete Event Simulation Methods 280

      9.3 A Bayesian View of DES 283

      9.4 Case Study: A G=G=1 Queueing System 286

      9.5 Bayesian Output Analysis 288

      9.6 Simulation and Optimization 292

      9.7 Discussion 294

      10 Risk Analysis 301

      10.1 Introduction 301

      10.2 Risk Measures 302

      10.3 Ruin Problems 316

      10.4 Case Study: Ruin Probability Estimation 320

      10.5 Discussion 327

      Appendix A Main Distributions 337

      Appendix B Generating Functions and the Laplace-Stieltjes Transform 347

      Index

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