Mode mixture of unimodal distributions for insurance loss data
Loading...
Date
Authors
Tomarchio, Salvatore D.
Punzo, Antonio
Ferreira, Johannes Theodorus
Bekker, Andriette, 1958-
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
Insurance loss data have peculiar features that can rarely be accounted for by simple parametric distributions. Thus, in this manuscript, we first introduce a new type of location mixture model: the mode mixture. By using convenient mode-parameterized hump-shaped distributions, we present a family of eight mode mixture of unimodal distributions. Then, we fit these models to two real insurance loss datasets, where they are evaluated in terms of goodness of fit and ability to reproduce classical risk measures. We extend the comparisons to existing models based on mode-parameterized hump-shaped distributions. Lastly, using simulated data, we further investigate the performance of the estimated risk measures of our models.
Description
DATA AVAILABILITY :
The real datasets used in this manuscript are publicly available in the CASdatasets package for the R statistical software.
Keywords
Insurance losses, Location-scale mixture, Risk measures, SDG-01: No poverty
Sustainable Development Goals
SDG-01:No poverty
Citation
Tomarchio, S.D., Punzo, A., Ferreira, J.T. et al. Mode mixture of unimodal distributions for insurance loss data. Annals of Operations Research (2024). https://doi.org/10.1007/s10479-024-06063-9.