A fair price to pay: Exploiting causal graphs for fairness in insurance

Olivier Côté et al.

Journal of Risk and Insurance2025https://doi.org/10.1111/jori.12503article
AJG 3ABDC A
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0.50

Abstract

In many jurisdictions, insurance companies are prohibited from discriminating based on certain policyholder characteristics. Exclusion of prohibited variables from models prevents direct discrimination, but fails to address proxy discrimination, a phenomenon especially prevalent when powerful predictive algorithms are fed with an abundance of acceptable covariates. The lack of formal definition for key fairness concepts, in particular indirect discrimination, hinders effective fairness assessment. We review causal inference notions and introduce a causal graph tailored for fairness in insurance. Exploiting these, we discuss potential sources of bias, formally define direct and indirect discrimination, and study the theoretical properties of fairness methodologies. A novel categorization of fair methodologies into five families (best‐estimate, unaware, aware, hyperaware, and corrective) is constructed based on their expected fairness properties. A comprehensive pedagogical example illustrates the implications of our findings: the interplay between our fair score families, group fairness criteria, and discrimination.

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https://doi.org/https://doi.org/10.1111/jori.12503

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@article{olivier2025,
  title        = {{A fair price to pay: Exploiting causal graphs for fairness in insurance}},
  author       = {Olivier Côté et al.},
  journal      = {Journal of Risk and Insurance},
  year         = {2025},
  doi          = {https://doi.org/https://doi.org/10.1111/jori.12503},
}

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F · citation impact0.44 × 0.4 = 0.18
M · momentum0.65 × 0.15 = 0.10
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