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CausalFairML via RPID

A decision can be defined as fair if equal individuals are treated equally and unequals are treated unequally. Adopting this definition, the task of designing machine learning (ML) models that mitigate unfairness in automated decision-making systems must include causal thinking when introducing protected attributes: Following a recent proposal, we define individuals as being normatively equal if they are equal in a fictitious, normatively desired (FiND) world, where the protected attributes have no (direct or indirect) causal effect on the target.

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Cite this as

Ludwig Bothmann, Susanne Dandl, Michael Schomaker (2025). Dataset: CausalFairML via RPID. https://doi.org/10.57702/nkwmzleo

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Additional Info

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Created January 3, 2025
Last update January 3, 2025
Defined In https://doi.org/10.48550/arXiv.2307.12797
Author Ludwig Bothmann
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Susanne Dandl
Michael Schomaker