A Bayesian Approach for Prioritising Driving Behaviour Investigations in Telematic Auto Insurance Policies
Mark McLeod, Bernardo Perez-Orozco, Nika Lee, Davide Zilli

TL;DR
This paper presents a Bayesian method using GPS and accelerometer data to prioritize insurance investigations, significantly improving efficiency in identifying risky driving behaviors like commercial use.
Contribution
It introduces a Bayesian mixture model with MCMC to generate priority scores for policyholder investigation, enhancing detection accuracy over manual methods.
Findings
Top 0.9% of policyholders reviewed, 99.4% correctly identified
Model improves investigation efficiency by focusing on high-risk candidates
Bayesian approach effectively distinguishes rare high-risk behaviors
Abstract
Automotive insurers increasingly have access to telematic information via black-box recorders installed in the insured vehicle, and wish to identify undesirable behaviour which may signify increased risk or uninsured activities. However, identification of such behaviour with machine learning is non-trivial, and results are far from perfect, requiring human investigation to verify suspected cases. An appropriately formed priority score, generated by automated analysis of GPS data, allows underwriters to make more efficient use of their time, improving detection of the behaviour under investigation. An example of such behaviour is the use of a privately insured vehicle for commercial purposes, such as delivering meals and parcels. We first make use of trip GPS and accelerometer data, augmented by geospatial information, to train an imperfect classifier for delivery driving on a per-trip…
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Taxonomy
TopicsProbability and Risk Models · Insurance and Financial Risk Management · Insurance, Mortality, Demography, Risk Management
MethodsGreedy Policy Search
