A Data Science Approach to Risk Assessment for Automobile Insurance Policies
Patrick Hosein

TL;DR
This paper presents a data science method for risk assessment in automobile insurance that predicts total claims using historical data, balancing personalization and robustness through an optimal bias-variance trade-off.
Contribution
It introduces a novel approach to risk prediction that optimally balances personalization and data robustness for improved insurance premium estimation.
Findings
Effective prediction of claims using real data
Optimal bias-variance trade-off improves accuracy
Personalized policies based on feature similarity
Abstract
In order to determine a suitable automobile insurance policy premium one needs to take into account three factors, the risk associated with the drivers and cars on the policy, the operational costs associated with management of the policy and the desired profit margin. The premium should then be some function of these three values. We focus on risk assessment using a Data Science approach. Instead of using the traditional frequency and severity metrics we instead predict the total claims that will be made by a new customer using historical data of current and past policies. Given multiple features of the policy (age and gender of drivers, value of car, previous accidents, etc.) one can potentially try to provide personalized insurance policies based specifically on these features as follows. We can compute the average claims made per year of all past and current policies with identical…
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Taxonomy
TopicsStatistical Methods and Inference · Probability and Risk Models · Statistical Methods in Clinical Trials
