
Modelling MTPL insurance claim events: Can machine learning methods overperform the traditional GLM approach?
Author(s) -
Dávid Burka,
László Kovács,
László Szepesváry
Publication year - 2021
Publication title -
hungarian statistical review
Language(s) - English
Resource type - Journals
ISSN - 2630-9130
DOI - 10.35618/hsr2021.02.en034
Subject(s) - computer science , artificial neural network , machine learning , product (mathematics) , feature (linguistics) , generalized linear model , artificial intelligence , econometrics , economics , mathematics , linguistics , philosophy , geometry
Pricing an insurance product covering motor third-party liability is a major challenge for actuaries. Comprehensive statistical modelling and modern computational power are necessary to solve this problem. The generalised linear and additive modelling approaches have been widely used by insurance companies for a long time. Modelling with modern machine learning methods has recently started, but applying them properly with relevant features is a great issue for pricing experts. This study analyses the claim-causing probability by fitting generalised linear modelling, generalised additive modelling, random forest, and neural network models. Several evaluation measures are used to compare these techniques. The best model is a mixture of the base methods. The authors’ hypothesis about the existence of significant interactions between feature variables is proved by the models. A simplified classification and visualisation is performed on the final model, which can support tariff applications later.