Flexibly Fair Representation Learning by Disentanglement
Rich Zemel (University of Toronto)
We consider the problem of learning representations that achieve group and subgroup fairness with respect to multiple sensitive attributes. Taking inspiration from the disentangled representation learning literature, we propose an algorithm for learning compact representations of datasets that are useful for reconstruction and prediction, but are also flexibly fair, meaning they can be easily modified at test time to achieve sub-group demographic parity with respect to multiple sensitive attributes and their conjunctions. We show empirically that the resulting encoder— which does not require the sensitive attributes for inference—enables the adaptation of a single representation to a variety of fair classification tasks with new target labels and subgroup definitions.