Mixed poisson regression models with varying dispersion arising from non-conjugate mixing distributions

Tzougas, G., Hong, N. & Ho, R. (2022). Mixed poisson regression models with varying dispersion arising from non-conjugate mixing distributions. Algorithms, 15(1). https://doi.org/10.3390/a15010016
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In this article we present a class of mixed Poisson regression models with varying dispersion arising from non-conjugate to the Poisson mixing distributions for modelling overdispersed claim counts in non-life insurance. The proposed family of models combined with the adopted modelling framework can provide sufficient flexibility for dealing with different levels of overdispersion. For illustrative purposes, the Poisson-lognormal regression model with regression structures on both its mean and dispersion parameters is employed for modelling claim count data from a motor insurance portfolio. Maximum likelihood estimation is carried out via an expectation-maximization type algorithm, which is developed for the proposed family of models and is demonstrated to perform satisfactorily.

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