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协变量辅助网络的边协变量差分隐私

Edge-Covariate Differential Privacy for Covariate-Assisted Networks

Journal of Computational and Graphical Statistics · 2026
被引 0 · 同刊同年前 5%
ABS 3

中文导读

提出边协变量差分隐私框架,同时保护网络中的边及其协变量,在联合隐空间模型下研究参数估计的隐私-效用权衡,并通过模拟和真实引文网络验证方法效果。

Abstract

Differential privacy has become a crucial tool for protecting sensitive information. In network data, both the existence of edges and their associated covariates may reveal private details, making their unprotected release a serious privacy concern. However, most existing approaches to edge privacy fail to account for the protection of edge-specific covariates. In this paper, we address this gap by proposing a unified framework for safeguarding both edges and edge-wise covariates in covariate-assisted network models. We introduce edge-covariate differential privacy, a privacy notion designed to simultaneously protect the presence of edges and their associated covariates. To assess its impact on network modeling, we investigate the fundamental privacy–utility tradeoff of parameter estimation under a joint latent space model. Our approach employs a mixed privatization mechanism that combines randomized response for edges with a Laplace mechanism for covariates. We establish asymptotic consistency and minimax optimality, up to logarithmic factors, for parameter estimation under this privacy constraint. Extensive simulation studies and an application to a real-world citation network demonstrate that our method achieves a favorable balance between strong privacy guarantees and estimation accuracy.

差分隐私网络数据隐私参数估计隐私-效用权衡