Description

Book Synopsis

An essential resource for constructing and analyzing advanced actuarial models


Loss Models: Further Topics presents extended coverage of modeling through the use of tools related to risk theory, loss distributions, and survival models. The book uses these methods to construct and evaluate actuarial models in the fields of insurance and business. Providing an advanced study of actuarial methods, the book features extended discussions of risk modeling and risk measures, including Tail-Value-at-Risk. Loss Models: Further Topics contains additional material to accompany the Fourth Edition of Loss Models: From Data to Decisions, such as:

  • Extreme value distributions
  • Coxian and related distributions
  • Mixed Erlang distributions
  • Computational and analytical methods for aggregate claim models
  • Counting processes
  • Compound distributions with time-dependent claim amounts
  • Copula models
  • <

    Table of Contents

    Preface xi

    1 Introduction 1

    2 Coxian and related distributions 3

    2.1 Introduction 3

    2.2 Combinations of exponentials 4

    2.3 Coxian-2 distributions 7

    3 Mixed Erlang distributions 11

    3.1 Introduction 11

    3.2 Members of the mixed Erlang class 12

    3.3 Distributional properties 18

    3.4 Mixed Erlang claim severity models 22

    4 Extreme value distributions 23

    4.1 Introduction 23

    4.2 Distribution of the maximum 25

    4.2.1 From a fixed number of losses 25

    4.2.2 From a random number of losses 27

    4.3 Stability of the maximum of the extreme value distribution 29

    4.4 The Fisher–Tippett theorem 30

    4.5 Maximum domain of attraction 32

    4.6 Generalized Pareto distributions 34

    4.7 Stability of excesses of the generalized Pareto 36

    4.8 Limiting distributions of excesses 37

    4.9 Parameter estimation 39

    4.9.1 Maximum likelihood estimation from the extreme value distribution 39

    4.9.2 Maximum likelihood estimation for the generalized Pareto distribution 42

    4.9.3 Estimating the Pareto shape parameter 44

    4.9.4 Estimating extreme probabilities 47

    4.9.5 Mean excess plots 49

    4.9.6 Further reading 49

    4.9.7 Exercises 49

    5 Analytic and related methods for aggregate claim models 51

    5.1 Introduction 51

    5.2 Elementary approaches 53

    5.3 Discrete analogues 58

    5.4 Right-tail asymptotics for aggregate losses 63

    5.4.1 Exercises 71

    6 Computational methods for aggregate models 73

    6.1 Recursive techniques for compound distributions 73

    6.2 Inversion methods 75

    6.2.1 Fast Fourier transform 75

    6.2.2 Direct numerical inversion 78

    6.3 Calculations with approximate distributions 80

    6.3.1 Arithmetic distributions 80

    6.3.2 Empirical distributions 83

    6.3.3 Piecewise linear cdf 84

    6.3.4 Exercises 85

    6.4 Comparison of methods 86

    6.5 The individual risk model 87

    6.5.1 Definition and notation 87

    6.5.2 Direct calculation 88

    6.5.3 Recursive calculation 89

    7 Counting Processes 97

    7.1 Nonhomogeneous birth processes 97

    7.1.1 Exercises 112

    7.2 Mixed Poisson processes 112

    7.2.1 Exercises 116

    8 Discrete Claim Count Models 119

    8.1 Unification of the (a, b, 1) and mixed Poisson classes 119

    8.2 A class of discrete generalized tail-based distributions 127

    8.3 Higher order generalized tail-based distributions 134

    8.4 Mixed Poisson properties of generalized tail-based distributions 139

    8.5 Compound geometric properties of generalized tail-based distributions 146

    8.5.1 Exercises 156

    9 Compound distributions with time dependent claim amounts 159

    9.1 Introduction 159

    9.2 A model for inflation 163

    9.3 A model for claim payment delays 173

    10 Copula models 187

    10.1 Introduction 187

    10.2 Sklar’s theorem and copulas 188

    10.3 Measures of dependency 189

    10.3.1 Spearman’s rho 190

    10.3.2 Kendall’s tau 190

    10.4 Tail dependence 191

    10.5 Archimedean copulas 192

    10.5.1 Exercise 197

    10.6 Elliptical copulas 197

    10.6.1 Exercise 199

    10.7 Extreme value copulas 200

    10.7.1 Exercises 202

    10.8 Archimax copulas 203

    10.9 Estimation of parameters 203

    10.9.1 Introduction 203

    10.9.2 Maximum likelihood estimation 204

    10.9.3 Semiparametric estimation 206

    10.9.4 The role of deductibles 206

    10.9.5 Goodness-of-fit testing 208

    10.9.6 An example 209

    10.9.7 Exercise 210

    10.10 Simulation from Copula Models 211

    10.10.1 Simulating from the Gaussian copula 213

    10.10.2 Simulating from the t copula 213

    11 Continuous-time ruin models 215

    11.1 Introduction 215

    11.1.1 The Poisson process 215

    11.1.2 The continuous-time problem 216

    11.2 The adjustment coefficient and Lundberg’s inequality 217

    11.2.1 The adjustment coefficient 217

    11.2.2 Lundberg’s inequality 221

    11.2.3 Exercises 223

    11.3 An integrodifferential equation 224

    11.3.1 Exercises 228

    11.4 The maximum aggregate loss 229

    11.4.1 Exercises 238

    11.5 Cramer’s asymptotic ruin formula and Tijms’ approximation 240

    11.5.1 Exercises 243

    11.6 The Brownian motion risk process 245

    11.7 Brownian motion and the probability of ruin 249

    12 Interpolation and smoothing 255

    12.1 Introduction 255

    12.2 Interpolation with splines 257

    12.2.1 Exercises 263

    12.3 Extrapolating with splines 264

    12.3.1 Exercise 265

    12.4 Smoothing with splines 265

    12.4.1 Exercise 272

    A An inventory of continuous distributions 273

    A.1 Introduction 273

    A.2 Transformed beta family 277

    A.2.1 Four-parameter distribution 277

    A.2.2 Three-parameter distributions 277

    A.2.3 Two-parameter distributions 279

    A.3 transformed gamma family 281

    A.3.1 Three-parameter distributions 281

    A.3.2 Two-parameter distributions 282

    A.3.3 One-parameter distributions 283

    A.4 Distributions for large losses 284

    A.4.1 Extreme value distributions 284

    A.4.2 Generalized Pareto distributions 285

    A.5 Other distributions 285

    A.6 Distributions with finite support 287

    B An inventory of discrete distributions 289

    B.1 Introduction 289

    B.2 The (a, b, 0) class 290

    B.3 The (a, b, 1) class 291

    B.3.1 The zero-truncated subclass 291

    B.3.2 The zero-modified subclass 293

    B.4 The compound class 294

    B.4.1 Some compound distributions 294

    B.5 A hierarchy of discrete distributions 295

    C Discretization of the severity distribution 297

    C.1 The method of rounding 297

    C.2 Mean preserving 298

    C.3 Undiscretization of a discretized distribution 298

    D Solutions to Exercises 301

    D.1 Chapter 4 301

    D.2 Chapter 5 303

    D.3 Chapter 6 304

    D.4 Chapter 7 305

    D.5 Chapter 8 312

    D.6 Chapter 10 316

    D.7 Chapter 11 319

    D.8 Chapter 12 333

    References 339

    Index 345

Loss Models

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    A Hardback by Gordon E. Willmot, Harry H. Panjer, Gordon E. Willmot


      View other formats and editions of Loss Models by Gordon E. Willmot

      Publisher: Wiley
      Publication Date: 27/09/2013
      ISBN13: 9781118343562, 978-1118343562
      ISBN10:

      Description

      Book Synopsis

      An essential resource for constructing and analyzing advanced actuarial models


      Loss Models: Further Topics presents extended coverage of modeling through the use of tools related to risk theory, loss distributions, and survival models. The book uses these methods to construct and evaluate actuarial models in the fields of insurance and business. Providing an advanced study of actuarial methods, the book features extended discussions of risk modeling and risk measures, including Tail-Value-at-Risk. Loss Models: Further Topics contains additional material to accompany the Fourth Edition of Loss Models: From Data to Decisions, such as:

      • Extreme value distributions
      • Coxian and related distributions
      • Mixed Erlang distributions
      • Computational and analytical methods for aggregate claim models
      • Counting processes
      • Compound distributions with time-dependent claim amounts
      • Copula models
      • <

        Table of Contents

        Preface xi

        1 Introduction 1

        2 Coxian and related distributions 3

        2.1 Introduction 3

        2.2 Combinations of exponentials 4

        2.3 Coxian-2 distributions 7

        3 Mixed Erlang distributions 11

        3.1 Introduction 11

        3.2 Members of the mixed Erlang class 12

        3.3 Distributional properties 18

        3.4 Mixed Erlang claim severity models 22

        4 Extreme value distributions 23

        4.1 Introduction 23

        4.2 Distribution of the maximum 25

        4.2.1 From a fixed number of losses 25

        4.2.2 From a random number of losses 27

        4.3 Stability of the maximum of the extreme value distribution 29

        4.4 The Fisher–Tippett theorem 30

        4.5 Maximum domain of attraction 32

        4.6 Generalized Pareto distributions 34

        4.7 Stability of excesses of the generalized Pareto 36

        4.8 Limiting distributions of excesses 37

        4.9 Parameter estimation 39

        4.9.1 Maximum likelihood estimation from the extreme value distribution 39

        4.9.2 Maximum likelihood estimation for the generalized Pareto distribution 42

        4.9.3 Estimating the Pareto shape parameter 44

        4.9.4 Estimating extreme probabilities 47

        4.9.5 Mean excess plots 49

        4.9.6 Further reading 49

        4.9.7 Exercises 49

        5 Analytic and related methods for aggregate claim models 51

        5.1 Introduction 51

        5.2 Elementary approaches 53

        5.3 Discrete analogues 58

        5.4 Right-tail asymptotics for aggregate losses 63

        5.4.1 Exercises 71

        6 Computational methods for aggregate models 73

        6.1 Recursive techniques for compound distributions 73

        6.2 Inversion methods 75

        6.2.1 Fast Fourier transform 75

        6.2.2 Direct numerical inversion 78

        6.3 Calculations with approximate distributions 80

        6.3.1 Arithmetic distributions 80

        6.3.2 Empirical distributions 83

        6.3.3 Piecewise linear cdf 84

        6.3.4 Exercises 85

        6.4 Comparison of methods 86

        6.5 The individual risk model 87

        6.5.1 Definition and notation 87

        6.5.2 Direct calculation 88

        6.5.3 Recursive calculation 89

        7 Counting Processes 97

        7.1 Nonhomogeneous birth processes 97

        7.1.1 Exercises 112

        7.2 Mixed Poisson processes 112

        7.2.1 Exercises 116

        8 Discrete Claim Count Models 119

        8.1 Unification of the (a, b, 1) and mixed Poisson classes 119

        8.2 A class of discrete generalized tail-based distributions 127

        8.3 Higher order generalized tail-based distributions 134

        8.4 Mixed Poisson properties of generalized tail-based distributions 139

        8.5 Compound geometric properties of generalized tail-based distributions 146

        8.5.1 Exercises 156

        9 Compound distributions with time dependent claim amounts 159

        9.1 Introduction 159

        9.2 A model for inflation 163

        9.3 A model for claim payment delays 173

        10 Copula models 187

        10.1 Introduction 187

        10.2 Sklar’s theorem and copulas 188

        10.3 Measures of dependency 189

        10.3.1 Spearman’s rho 190

        10.3.2 Kendall’s tau 190

        10.4 Tail dependence 191

        10.5 Archimedean copulas 192

        10.5.1 Exercise 197

        10.6 Elliptical copulas 197

        10.6.1 Exercise 199

        10.7 Extreme value copulas 200

        10.7.1 Exercises 202

        10.8 Archimax copulas 203

        10.9 Estimation of parameters 203

        10.9.1 Introduction 203

        10.9.2 Maximum likelihood estimation 204

        10.9.3 Semiparametric estimation 206

        10.9.4 The role of deductibles 206

        10.9.5 Goodness-of-fit testing 208

        10.9.6 An example 209

        10.9.7 Exercise 210

        10.10 Simulation from Copula Models 211

        10.10.1 Simulating from the Gaussian copula 213

        10.10.2 Simulating from the t copula 213

        11 Continuous-time ruin models 215

        11.1 Introduction 215

        11.1.1 The Poisson process 215

        11.1.2 The continuous-time problem 216

        11.2 The adjustment coefficient and Lundberg’s inequality 217

        11.2.1 The adjustment coefficient 217

        11.2.2 Lundberg’s inequality 221

        11.2.3 Exercises 223

        11.3 An integrodifferential equation 224

        11.3.1 Exercises 228

        11.4 The maximum aggregate loss 229

        11.4.1 Exercises 238

        11.5 Cramer’s asymptotic ruin formula and Tijms’ approximation 240

        11.5.1 Exercises 243

        11.6 The Brownian motion risk process 245

        11.7 Brownian motion and the probability of ruin 249

        12 Interpolation and smoothing 255

        12.1 Introduction 255

        12.2 Interpolation with splines 257

        12.2.1 Exercises 263

        12.3 Extrapolating with splines 264

        12.3.1 Exercise 265

        12.4 Smoothing with splines 265

        12.4.1 Exercise 272

        A An inventory of continuous distributions 273

        A.1 Introduction 273

        A.2 Transformed beta family 277

        A.2.1 Four-parameter distribution 277

        A.2.2 Three-parameter distributions 277

        A.2.3 Two-parameter distributions 279

        A.3 transformed gamma family 281

        A.3.1 Three-parameter distributions 281

        A.3.2 Two-parameter distributions 282

        A.3.3 One-parameter distributions 283

        A.4 Distributions for large losses 284

        A.4.1 Extreme value distributions 284

        A.4.2 Generalized Pareto distributions 285

        A.5 Other distributions 285

        A.6 Distributions with finite support 287

        B An inventory of discrete distributions 289

        B.1 Introduction 289

        B.2 The (a, b, 0) class 290

        B.3 The (a, b, 1) class 291

        B.3.1 The zero-truncated subclass 291

        B.3.2 The zero-modified subclass 293

        B.4 The compound class 294

        B.4.1 Some compound distributions 294

        B.5 A hierarchy of discrete distributions 295

        C Discretization of the severity distribution 297

        C.1 The method of rounding 297

        C.2 Mean preserving 298

        C.3 Undiscretization of a discretized distribution 298

        D Solutions to Exercises 301

        D.1 Chapter 4 301

        D.2 Chapter 5 303

        D.3 Chapter 6 304

        D.4 Chapter 7 305

        D.5 Chapter 8 312

        D.6 Chapter 10 316

        D.7 Chapter 11 319

        D.8 Chapter 12 333

        References 339

        Index 345

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