Computation and Modelling in Insurance and Finance
Focusing on what actuaries need in practice, this introductory account provides readers
with essential tools for handling complex problems and explains how simulation models can
be created, used and re-used (with modifications) in related situations. The book begins
by outlining the basic tools of modelling and simulation, including a discussion of the
Monte Carlo method and its use. Part II deals with general insurance and Part III with
life insurance and financial risk. Algorithms that can be implemented on any programming
platform are spread throughout and a program library written in R is included. Numerous
figures and experiments with R-code illustrate the text. The author's non-technical
approach is ideal for graduate students, the only prerequisites being introductory courses
in calculus and linear algebra, probability and statistics. The book will also be of value
to actuaries and other analysts in the industry looking to update their skills.
1. Introduction
Part I. Tools for Risk Analysis: 2. Getting started the Monte Carlo way
3. Evaluating risk: a primer
4. Monte Carlo II: improving technique
5. Modelling I: linear dependence
6. Modelling II: conditional and non-linear
7. Historical estimation and error
Part II. General Insurance: 8. Modelling claim frequency
9. Modelling claim size
10. Solvency and pricing
11. Liabilities over long terms
Part III. Life Insurance and Financial Risk: 12. Life and state-dependent insurance
13. Stochastic asset models
14. Financial derivatives
15. Integrating risk of different origin
Appendix A. Random variables: principal tools
Appendix B. Linear algebra and stochastic vectors
Appendix C. Numerical algorithms: a third tool
References
Index.
709 pages, Hardcover