成分数据的差分隐私方法

Differentially Private Methods for Compositional Data

Journal of Computational and Graphical Statistics · 2024
被引 0
ABS 3

中文导读

针对成分数据(如时间使用调查数据)提出基于狄利克雷分布的差分隐私方法,包括贝叶斯和自助法,通过模拟比较给出推荐,并应用于美国时间使用调查数据。

Abstract

Confidential data, such as electronic health records, activity data from wearable devices, and geolocation data, are becoming increasingly prevalent. Differential privacy provides a framework to conduct statistical analyses while mitigating the risk of leaking private information. Compositional data, which consist of vectors with positive components that add up to a constant, have received little attention in the differential privacy literature. This article proposes differentially private approaches for analyzing compositional data based on the Dirichlet distribution. We explore several methods, including Bayesian and bootstrap procedures. For the Bayesian methods, we consider posterior inference techniques based on Markov Chain Monte Carlo, Approximate Bayesian Computation, and asymptotic approximations. We conduct an extensive simulation study to compare these approaches and make evidence-based recommendations. Finally, we apply the methodology to a data set from the American Time Use Survey.

差分隐私成分数据贝叶斯推断计量经济学机器学习