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8 - Modelling claim frequency

from PART II - GENERAL INSURANCE

Published online by Cambridge University Press:  05 May 2014

Erik Bølviken
Affiliation:
Universitetet i Oslo
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Summary

Introduction

Actuarial modelling in general insurance is usually broken down on claim size (next chapter) and claim frequency (treated here). Section 3.2 introduced the Poisson distribution as a model for claim numbers. The parameter was λ = μT (for single policies) and λ = JμT (for portfolios) where J was the number of policies, μ the claim intensity and T the time of exposure. Most models for claim numbers are related to the Poisson distribution in some way, and this line has strong theoretical support through the Poisson point process in Section 8.2.

The intensity μ is a vehicle for model extensions. One viewpoint with a long tradition in actuarial science is to regard it as random, either drawn independently for each customer or once as a common parameter for all. Models of that kind were initiated in Section 6.3, and there will be more below. Then there are situations where variations in μ are linked to explanatory factors, such as young drivers being more risky than older ones or earthquakes or hurricanes be more common in certain parts of the world than in others. Risk may also be growing systematically over time or be influenced by the season of the year, as in Figure 8.2 later. Explanatory variables are best treated through Poisson regression, introduced in Section 8.4.

The world of Poisson

Introduction

The world of Poisson is the world of the accidental where incidents, though rare, do occur and independently of each other. Insurance processes are much like that, which suggests they can be lifted into a Poisson framework.

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Publisher: Cambridge University Press
Print publication year: 2014

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  • Modelling claim frequency
  • Erik Bølviken, Universitetet i Oslo
  • Book: Computation and Modelling in Insurance and Finance
  • Online publication: 05 May 2014
  • Chapter DOI: https://doi.org/10.1017/CBO9781139020251.009
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  • Modelling claim frequency
  • Erik Bølviken, Universitetet i Oslo
  • Book: Computation and Modelling in Insurance and Finance
  • Online publication: 05 May 2014
  • Chapter DOI: https://doi.org/10.1017/CBO9781139020251.009
Available formats
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  • Modelling claim frequency
  • Erik Bølviken, Universitetet i Oslo
  • Book: Computation and Modelling in Insurance and Finance
  • Online publication: 05 May 2014
  • Chapter DOI: https://doi.org/10.1017/CBO9781139020251.009
Available formats
×