ArXiv TLDR

Geometric Renyi Differential Privacy: Ricci Curvature Characterized by Heat Diffusion Mechanisms

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2604.20761

Xiaotian Chang, Yangdi Jiang, Cyrus Mostajeran, Qirui Hu

stat.MLstat.ME

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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