Options
Motor insurance claim modelling with factor collapsing and Bayesian model averaging
Alternative Title
Motor Insurance Accidental Damage Claims Modeling with Factor Collapsing and Bayesian Model Averaging
Author(s)
Date Issued
2018-03-26
Date Available
2019-05-09T08:24:29Z
Abstract
Accidental damage is a typical component of motor insurance claim. Modeling of this nature generally involves analysis of past claim history and different characteristics of the insured objects and the policyholders. Generalized linear models (GLMs) have become the industry’s standard approach for pricing and modeling risks of this nature. However, the GLM approach utilizes a single best model on which loss predictions are based, which ignores the uncertainty among the competing models and variable selection. An additional characteristic of motor insurance datasets is the presence of many categorical variables, within which the number of levels is high. In particular, not all levels of such variables may be statistically significant and rather some subsets of the levels may be merged to give a smaller overall number of levels for improved model parsimony and interpretability. A method is proposed for assessing the optimal manner in which to collapse a factor with many levels into one with a smaller number of levels, then Bayesian model averaging (BMA) is used to blend model predictions from all reasonable models to account for factor collapsing uncertainty. This method will be computationally intensive due to the number of factors being collapsed as well as the possibly large number of levels within factors. Hence a stochastic optimisation is proposed to quickly find the best collapsing cases across the model space.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Type of Material
Journal Article
Publisher
Wiley
Journal
Stat
Volume
7
Issue
1
Copyright (Published Version)
2018 John Wiley & Sons Ltd
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
No Thumbnail Available
Name
insight_publication.pdf
Size
9.54 MB
Format
Adobe PDF
Checksum (MD5)
e314f9c845a5bb7ae26692eb2dfcd2e1
Owning collection