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Séminaire de la chaire PARI

Fairness and Risk: An Ethical Argument for a Group Fairness Definition Insurers Can Use (séance en anglais)

La chaire PARI vous invite à son séminaire sur le thème : "Fairness and Risk: An Ethical Argument for a Group Fairness Definition Insurers Can Use" (séance en anglais), le mercredi 13 décembre, de 8h30 à 10h15.

Michele Loi, Politecnico di Milano, et Joe Baumann, University of Zurich, seront intervenants lors de ce séminaire.

Présentation :

Algorithmic predictions are promising for insurance companies to develop personalized risk models for determining premiums. In this context, issues of fairness, discrimination, and social injustice might arise: Algorithms for estimating the risk based on personal data may be biased towards specific social groups, leading to systematic disadvantages for those groups. Personalized premiums may thus lead to discrimination and social injustice.

It is well known from many application fields that such biases occur frequently and naturally when prediction models are applied to people unless special efforts are made to avoid them. Insurance is no exception. In this paper, we provide a thorough analysis of algorithmic fairness in the case of insurance premiums. We ask what “fairness” might mean in this context and how the fairness of a premium system can be measured. For this, we apply the established fairness frameworks of the fair machine learning literature to the case of insurance premiums and show which of the existing fairness criteria can be applied to assess the fairness of insurance premiums. We argue that two of the often-discussed group fairness criteria, independence (also called statistical parity or demographic parity) and separation (also known as equalized odds), are not normatively appropriate for insurance premiums. Instead, we propose the sufficiency criterion (also known as well calibration) as a morally defensible alternative that allows us to test for systematic biases in premiums towards certain groups based on the risk they bring to the pool. In addition, we clarify the connection between group fairness and different degrees of personalization.

Our findings enable insurers to assess the fairness properties of their risk models, helping them avoid reputation damage resulting from potentially unfair and discriminatory premium systems?

 

Inscriptions ICI

Mercredi 13 décembre 2023
08h30 - 10h15 (GMT +2)
L'événement est organisé en ligne
Intervenants
Joe Baumann
University of Zurich
Michele Loi
Politecnico di Milano

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Mercredi 13 décembre 2023
08h30 - 10h15 (GMT +2)
L'événement est organisé en ligne
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