Research on Governmental Data Sharing Based on Local Differential Privacy Approach

Liping Liu, Chunhui Piao, Xuehong Jiang, Li-Juan Zheng
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引用次数: 10

Abstract

With the construction and implementation of the government information resources sharing mechanism, the protection of citizens' privacy has become a vital issue for government departments and the public. This paper discusses the risk of citizens' privacy disclosure related to data sharing among government departments, and analyzes the current major privacy protection models for data sharing. Aiming at the issues of low efficiency and low reliability in existing e-government applications, a statistical data sharing framework among governmental departments based on local differential privacy and blockchain is established, and its applicability and advantages are illustrated through example analysis. The characteristics of the private blockchain enhance the security, credibility and responsiveness of information sharing between departments. Local differential privacy provides better usability and security for sharing statistics. It not only keeps statistics available, but also protects the privacy of citizens.
基于局部差分隐私方法的政府数据共享研究
随着政府信息资源共享机制的构建与实施,公民隐私保护已成为摆在政府部门和公众面前的重要问题。本文探讨了与政府部门数据共享相关的公民隐私泄露风险,分析了目前主要的数据共享隐私保护模式。针对现有电子政务应用中效率低、可靠性低的问题,建立了基于地方差异隐私和区块链的政府部门间统计数据共享框架,并通过实例分析说明了其适用性和优势。私有区块链的特性增强了部门间信息共享的安全性、可信度和响应性。本地差异隐私为共享统计数据提供了更好的可用性和安全性。它不仅可以提供统计数据,还可以保护公民的隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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