This thesis examines the application of credibility theory in determining insurance premiums,
with a particular focus on comparing hierarchical and non-hierarchical models.
The importance of this research lies in its focus on the potential of using hierarchical
models, rather than common non-hierarchical models, to enhance the accuracy of premium
estimates and achieve lower error rates. The thesis employs a blend of theoretical
exploration and empirical analysis, drawing from probability theory, Bayesian statistics,
and linear estimators to establish a robust framework. Key findings from a case study
using data provided by Allianz Versicherungs-AG indicate that hierarchical models, despite
their complexity, produce the lowest error rates, outperforming both general and
Poisson-based non-hierarchical models. The research concludes that the hierarchical
method is justified for this dataset, o↵ering a superior alternative to simpler models and
paving the way for further exploration in diverse insurance branches.
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This thesis examines the application of credibility theory in determining insurance premiums,
with a particular focus on comparing hierarchical and non-hierarchical models.
The importance of this research lies in its focus on the potential of using hierarchical
models, rather than common non-hierarchical models, to enhance the accuracy of premium
estimates and achieve lower error rates. The thesis employs a blend of theoretical
exploration and empirical analysis, drawing from prob...
»