A k-Inflated Negative Binomial Mixture Regression Model: Application to Rate--Making Systems
Abstract
This article introduces a k-Inflated Negative Binomial mixture distribution/regression model as a more flexible alternative to zero-inflated Poisson distribution/regression model. An EM algorithm has been employed to estimate the model's parameters. Then, such new model along with a Pareto mixture model have been employed to design an optimal rate--making system. Namely, this article employs number/size of reported claims of Iranian third party insurance dataset. Then, it employs the k-Inflated Negative Binomial mixture distribution/regression model as well as other well developed counting models along with a Pareto mixture model to model frequency/severity of reported claims in Iranian third party insurance dataset. Such numerical illustration shows that: ({\bf 1}) the k-Inflated Negative Binomial mixture models provide more fair rate/pure premiums for policyholders under a rate--making system; and ({\bf 2}) in the situation that number of reported claims uniformly distributed in past experience of a policyholder (for instance and instead of and ). The rate/pure premium under the k-Inflated Negative Binomial mixture models are more appealing and acceptable.
Cite
@article{arxiv.1701.05452,
title = {A k-Inflated Negative Binomial Mixture Regression Model: Application to Rate--Making Systems},
author = {Amir T. Payandeh Najafabadi and Saeed MohammadPour},
journal= {arXiv preprint arXiv:1701.05452},
year = {2017}
}