Geometric Renyi Differential Privacy: Ricci Curvature Characterized by Heat Diffusion Mechanisms
Xiaotian Chang, Yangdi Jiang, Cyrus Mostajeran, Qirui Hu
TLDR
This paper introduces Geometric Renyi Differential Privacy, linking Ricci curvature and heat diffusion for manifold-valued data.
Key contributions
- Develops novel Renyi DP mechanisms for Riemannian manifold-valued data.
- Connects Renyi divergence to dimension-free Harnack inequalities and Ricci curvature.
- Proposes heat diffusion (non-negative Ricci) and Langevin-process (general) based mechanisms.
- Applies to privacy-preserving estimation of the generalized Frechet mean.
Why it matters
This work bridges geometric analysis and differential privacy, offering novel mechanisms for privacy-preserving data analysis on complex manifold data. It provides intrinsic, normalization-free methods with strong theoretical guarantees and practical applications, advancing privacy in geometric data settings.
Original Abstract
In this paper, we develop a novel privacy mechanism for Riemannian manifold-valued data. Our key contribution lies in uncovering unexpected connections among geometric analysis, heat diffusion models, and differential privacy (DP). We characterize the Renyi divergence via dimension-free Harnack inequalities on Riemannian manifolds and establish Renyi differential privacy guarantees governed by Ricci curvature. For manifolds with nonnegative Ricci curvature, we propose a mechanism based on heat diffusion. In contrast, for general manifolds we introduce a Langevin-process-based approach that yields intrinsic mechanisms supporting normalization-free sampling and continuous privacy-utility trade-offs. We derive detailed utility analyses for both mechanisms. As a statistical application, we develop privacy-preserving estimation of the generalized Frechet mean, including nontrivial sensitivity analysis and phase transition characterizations. Numerical experiments further demonstrate the advantages of the proposed DP mechanisms over existing approaches.
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