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Machine learning models reveal geographic data improves insurance claim predictions

Researchers have developed a method to incorporate geographic information into motor insurance claim prediction models, even with limited location data. By utilizing environmental data from OpenStreetMap and CORINE Land Cover, along with visual features from satellite imagery, they enhanced the accuracy of zone-level claim frequency models. The study found that combining coordinates with environmental features at a 5 km scale was most beneficial for both linear and tree-based models, demonstrating that the representation of geographic context is more crucial than model complexity. AI

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IMPACT Demonstrates how alternative data sources can improve actuarial models, potentially leading to more accurate risk assessments in insurance.

RANK_REASON Academic paper on applying machine learning to insurance risk modeling.

Read on arXiv stat.ML →

Machine learning models reveal geographic data improves insurance claim predictions

COVERAGE [1]

  1. arXiv stat.ML TIER_1 · Kristina G. Stankova ·

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

    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…