Bridging transparency and predictive power: integrating explainable ML into actuarial modelling
Michiel Luteijn,
Jacky Tam and
Fiona Fan
British Actuarial Journal, 2026, vol. 31, -
Abstract:
Health and care (H&C) actuaries are well positioned to benefit from recent advances in data science as machine learning (ML) techniques have become increasingly transparent and accessible. The ML developments allow actuaries to detect complex nonlinear patterns and interactions that are difficult to capture using traditional generalised linear models (GLMs), without sacrificing the clarity and governance advantages that make GLMs central to actuarial practice. Using a large life insurance data set, we demonstrate and appraise three emerging hybrid approaches: interpretable boosted linear models, XGBoost-informed GLM and an interaction detection workflow. Our findings show that actuaries can improve modelling accuracy, measured by Poisson deviance, by integrating ML insights into traditional modelling techniques, achieving a practical balance of interpretability, expert judgement, and modern analytical innovation.
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:cup:bracjl:v:31:y:2026:i::p:-_11
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