ArXiv TLDR

Revealing Geography-Driven Signals in Zone-Level Claim Frequency Models: An Empirical Study using Environmental and Visual Predictors

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2604.21893

Sherly Alfonso-Sánchez, Cristián Bravo, Kristina G. Stankova

stat.MLcs.LGq-fin.RM

TLDR

This study demonstrates that incorporating zone-level geographic data from OpenStreetMap and imagery significantly enhances motor insurance claim frequency models.

Key contributions

  • Incorporates OpenStreetMap and orthoimagery data into zone-level MTPL claim frequency models.
  • Geographic data (coordinates + environmental features at 5km) significantly improves GLM and tree-based models.
  • Image embeddings enhance accuracy for regularized GLMs when environmental features are unavailable.
  • Predictive value of geography depends more on its representation than model complexity.

Why it matters

This research offers a practical approach to integrate crucial geographic context into actuarial models despite data limitations. It highlights how alternative data sources can enhance risk prediction, making insurance models more accurate and stable. This is vital for improving pricing and risk assessment in the insurance industry.

Original Abstract

Geographic context is often consider relevant to motor insurance risk, yet public actuarial datasets provide limited location identifiers, constraining how this information can be incorporated and evaluated in claim-frequency models. This study examines how geographic information from alternative data sources can be incorporated into actuarial models for Motor Third Party Liability (MTPL) claim prediction under such constraints. Using the BeMTPL97 dataset, we adopt a zone-level modeling framework and evaluate predictive performance on unseen postcodes. Geographic information is introduced through two channels: environmental indicators from OpenStreetMap and CORINE Land Cover, and orthoimagery released by the Belgian National Geographic Institute for academic use. We evaluate the predictive contribution of coordinates, environmental features, and image embeddings across three baseline models: generalized linear models (GLMs), regularized GLMs, and gradient-boosted trees, while raw imagery is modeled using convolutional neural networks. Our results show that augmenting actuarial variables with constructed geographic information improves accuracy. Across experiments, both linear and tree-based models benefit most from combining coordinates with environmental features extracted at 5 km scale, while smaller neighborhoods also improve baseline specifications. Generally, image embeddings do not improve performance when environmental features are available; however, when such features are absent, pretrained vision-transformer embeddings enhance accuracy and stability for regularized GLMs. Our results show that the predictive value of geographic information in zone-level MTPL frequency models depends less on model complexity than on how geography is represented, and illustrate that geographic context can be incorporated despite limited individual-level spatial information.

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