We theoretically study the impact of differential privacy on fairness in classification. We prove that, given a class of models, popular group fairness measures are pointwise Lipschitz-continuous with respect to the parameters of the model. This result is a consequence of a more general statement on accuracy conditioned on an arbitrary event (such as membership to a sensitive group), which may be of independent interest. We use the aforementioned Lipschitz property to prove a high probability bound showing that, given enough examples, the fairness level of private models is close to the one of their non-private counterparts.
翻译:我们从理论上研究了差异隐私对分类公平性的影响。我们证明,根据一组模式,大众群体公平措施在模式参数方面是明智的,利普西茨是连续的。这一结果是由于对任意事件(如加入敏感群体)的准确性作了比较笼统的说明,而这种声明可能具有独立的兴趣。我们利用上述利普西茨财产证明,如果有足够的例子,私人模式的公平性接近非私人模式的准确性,那么,我们用上述利普西茨财产证明,这种可能性很大。