Towards Group Fairness with Multiple Sensitive Attributes in Federated Foundation Models
This addresses fairness issues in sensitive domains like healthcare for under-represented groups, but it is incremental as it builds on existing federated foundation models.
The paper tackled the problem of achieving group fairness with multiple sensitive attributes in federated foundation models, extending the model structure to trade off these attributes and quantifying causal effects, with experiments validating its effectiveness.
The deep integration of foundation models (FM) with federated learning (FL) enhances personalization and scalability for diverse downstream tasks, making it crucial in sensitive domains like healthcare. Achieving group fairness has become an increasingly prominent issue in the era of federated foundation models (FFMs), since biases in sensitive attributes might lead to inequitable treatment for under-represented demographic groups. Existing studies mostly focus on achieving fairness with respect to a single sensitive attribute. This renders them unable to provide clear interpretability of dependencies among multiple sensitive attributes which is required to achieve group fairness. Our paper takes the first attempt towards a causal analysis of the relationship between group fairness across various sensitive attributes in the FFM. We extend the FFM structure to trade off multiple sensitive attributes simultaneously and quantify the causal effect behind the group fairness through causal discovery and inference. Extensive experiments validate its effectiveness, offering insights into interpretability towards building trustworthy and fair FFM systems.