Fairness Under Demographic Scarce Regime
Most existing works on fairness assume the model has full access to demographic information. However, there exist scenarios where demographic information is partially available because a record was not maintained throughout data collection or for privacy reasons. This setting is known as demographic...
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Zusammenfassung: | Most existing works on fairness assume the model has full access to
demographic information. However, there exist scenarios where demographic
information is partially available because a record was not maintained
throughout data collection or for privacy reasons. This setting is known as
demographic scarce regime. Prior research has shown that training an attribute
classifier to replace the missing sensitive attributes (proxy) can still
improve fairness. However, using proxy-sensitive attributes worsens
fairness-accuracy tradeoffs compared to true sensitive attributes. To address
this limitation, we propose a framework to build attribute classifiers that
achieve better fairness-accuracy tradeoffs. Our method introduces uncertainty
awareness in the attribute classifier and enforces fairness on samples with
demographic information inferred with the lowest uncertainty. We show
empirically that enforcing fairness constraints on samples with uncertain
sensitive attributes can negatively impact the fairness-accuracy tradeoff. Our
experiments on five datasets showed that the proposed framework yields models
with significantly better fairness-accuracy tradeoffs than classic attribute
classifiers. Surprisingly, our framework can outperform models trained with
fairness constraints on the true sensitive attributes in most benchmarks. We
also show that these findings are consistent with other uncertainty measures
such as conformal prediction. |
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DOI: | 10.48550/arxiv.2307.13081 |