Reconciling Privacy and Explainability in High-Stakes: A Systematic Inquiry
Source Title: Transactions on Machine Learning Research, Quartile: Q2, DOI Link
View abstract ⏷
The integration of deep learning into diverse high-stakes scientific applications demands a careful balance between Privacy and Explainability. This work explores the interplay between two essential requirements: Right-to-Privacy (RTP), enforced through differential privacy (DP)the gold standard for privacy-preserving machine learning due to its rigorous guaranteesand Right-to-Explanation (RTE), facilitated by post-hoc explainers, the go-to tools for model auditing. We systematically assess how DP influences the applicability of widely used explanation methods, uncovering fundamental intricacies between privacy-preserving models and explainability objectives. Furthermore, our work throws light on how RTP and RTE can be reconciled in high-stakes. Our study, with the example of a wildly used use-case, concludes by outlining a novel software pipeline that upholds RTP and RTE requirements