Fair Uncertainty Quantification for Depression Prediction
Journal:
arXiv
Published Date:
May 8, 2025
Abstract
Trustworthy depression prediction based on deep learning, incorporating both
predictive reliability and algorithmic fairness across diverse demographic
groups, is crucial for clinical application. Recently, achieving reliable
depression predictions through uncertainty quantification has attracted
increasing attention. However, few studies have focused on the fairness of
uncertainty quantification (UQ) in depression prediction. In this work, we
investigate the algorithmic fairness of UQ, namely Equal Opportunity Coverage
(EOC) fairness, and propose Fair Uncertainty Quantification (FUQ) for
depression prediction. FUQ pursues reliable and fair depression predictions
through group-based analysis. Specifically, we first group all the participants
by different sensitive attributes and leverage conformal prediction to quantify
uncertainty within each demographic group, which provides a theoretically
guaranteed and valid way to quantify uncertainty for depression prediction and
facilitates the investigation of fairness across different demographic groups.
Furthermore, we propose a fairness-aware optimization strategy that formulates
fairness as a constrained optimization problem under EOC constraints. This
enables the model to preserve predictive reliability while adapting to the
heterogeneous uncertainty levels across demographic groups, thereby achieving
optimal fairness. Through extensive evaluations on several visual and audio
depression datasets, our approach demonstrates its effectiveness.