On Perfect Obfuscation: Local Information Geometry Analysis

Behrooz Razeghi, F. Calmon, D. Gunduz, S. Voloshynovskiy
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引用次数: 9

Abstract

We consider the problem of privacy-preserving data release for a specific utility task under perfect obfuscation constraint. We establish the necessary and sufficient condition to extract features of the original data that carry as much information about a utility attribute as possible, while not revealing any information about the sensitive attribute. This problem formulation generalizes both the information bottleneck and privacy funnel problems. We adopt a local information geometry analysis that provides useful insight into information coupling and trajectory construction of spherical perturbation of probability mass functions. This analysis allows us to construct the modal decomposition of the joint distributions, divergence transfer matrices, and mutual information. By decomposing the mutual information into orthogonal modes, we obtain the locally sufficient statistics for inferences about the utility attribute, while satisfying perfect obfuscation constraint. Furthermore, we develop the notion of perfect obfuscation based on χ2-divergence and Kullback–Leibler divergence in the Euclidean information space.
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关于完全混淆:局部信息几何分析
研究了在完全混淆约束下特定实用任务的隐私保护数据发布问题。我们建立了必要和充分条件,以提取原始数据的特征,这些特征携带尽可能多的关于实用属性的信息,同时不透露任何关于敏感属性的信息。这个问题的表述概括了信息瓶颈和隐私漏斗问题。我们采用了局部信息几何分析,为概率质量函数球面摄动的信息耦合和轨迹构建提供了有用的见解。这种分析使我们能够构造联合分布、散度转移矩阵和互信息的模态分解。通过将互信息分解为正交模态,在满足完全混淆约束的情况下,得到了效用属性推断的局部充分统计量。在此基础上,提出了欧几里得信息空间中基于χ2-散度和Kullback-Leibler散度的完全混淆概念。
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