Abstract
This paper proposes a new version of the collective risk model that allows for uncertainty in selecting the expected number of claims and the claim severity distribution. We provide two different methods of estimating the parameters of this model. It is demonstrated by computer simulation that one must combine the experience of several insureds in order to accurately quantify parameter uncertainty. Tests on a very large sample of individual insured data show a significant improvement in the accuracy of the collective risk model when parameter uncertainty is taken into account. The tests do not show perfect agreement between the model and the empirical data, but the agreement is close enough to be useful in many applications.
Volume
LXX
Page
111-143
Year
1983
Categories
Financial and Statistical Methods
Aggregation Methods
Collective Risk Model
Financial and Statistical Methods
Loss Distributions
Frequency
Financial and Statistical Methods
Loss Distributions
Severity
Financial and Statistical Methods
Aggregation Methods
Simulation
Publications
Proceedings of the Casualty Actuarial Society