Exploring the Unfairness of DP-SGD Across Settings

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End users and regulators require private and fair artificial intelligence models, but previous work suggests these objectives may be at odds. We use the CivilComments to evaluate the impact of applying the {\em de facto} standard approach to privacy, DP-SGD, across several fairness metrics. We evaluate three implementations of DP-SGD: for dimensionality reduction (PCA), linear classification (logistic regression), and robust deep learning (Group-DRO). We establish a negative, logarithmic correlation between privacy and fairness in the case of linear classification and robust deep learning. DP-SGD had no significant impact on fairness for PCA, but upon inspection, also did not seem to lead to private representations.
OriginalsprogEngelsk
Publikationsdato2022
Antal sider6
StatusUdgivet - 2022
BegivenhedThird AAAI Workshop on Privacy-Preserving Artificial Intelligence (PPAI-22) - VIRTUAL
Varighed: 28 feb. 2022 → …

Konference

KonferenceThird AAAI Workshop on Privacy-Preserving Artificial Intelligence (PPAI-22)
ByVIRTUAL
Periode28/02/2022 → …

ID: 341484877