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  1. Melting contestation: insurance fairness and machine learning.Laurence Barry & Arthur Charpentier - 2023 - Ethics and Information Technology 25 (4):1-13.
    With their intensive use of data to classify and price risk, insurers have often been confronted with data-related issues of fairness and discrimination. This paper provides a comparative review of discrimination issues raised by traditional statistics versus machine learning in the context of insurance. We first examine historical contestations of insurance classification, showing that it was organized along three types of bias: pure stereotypes, non-causal correlations, or causal effects that a society chooses to protect against, are thus the main sources (...)
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  • The credit they deserve: contesting predictive practices and the afterlives of red-lining.Emily Katzenstein - forthcoming - Contemporary Political Theory:1-21.
    Racial capitalism depends on the reproduction of an existing racialized economic order. In this article, I argue that the disavowal of past injustice is a central way in which this reproduction is ensured and that market-based forms of knowledge production, such as for-profit predictive practices, play a crucial role in facilitating this disavowal. Recent debates about the fairness of algorithms, data justice, and predictive policing have intensified long-standing controversies, both popular and academic, about the way in which statistical and financial (...)
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