PrivNUD: Effective Range Query Processing under Local Differential Privacy

Ning Wang, Yaohua Wang, Zhigang Wang, Jie Nie, Zhiqiang Wei, Peng Tang, Yu Gu, Ge Yu
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Abstract

Local differential privacy (LDP) has been established as a strong privacy standard for collecting sensitive information from users. Although it has attracted much research attention in recent years, the majority of existing works focus on applying LDP to frequency distribution estimation for each individual value in a discrete domain. This paper concerns the important range queries involving multiple discrete values. Till now, only a few works target this problem. They all rely on the B-ary tree to construct a uniform and hierarchical decomposition, so as to decrease the error when answering large range queries. However, the uniform splitting manner ignores the properties of decomposed sub-domains and processes them equally without preferences, which leads to significant performance penalty.In this paper, we tackle the problem head on: our proposal, privNUD, is a novel domain hierarchical decomposition mechanism. It dynamically decomposes each domain with a tailored granularity into some sub-domains, which sensitively considers the potential chances to answer one range query. The issue of granularity is carefully analyzed for better performance. It also can smartly prune the sub-domains with small frequencies. Besides, an adaptive user allocation technique is designed to dynamically decide the scale of users that are involved in each sub-domain’s frequency estimation. Extensive experiments using real and synthetic datasets demonstrate that privNUD achieves significantly higher result accuracy compared to the up-to-date solutions.
PrivNUD:本地差分隐私下的有效范围查询处理
本地差分隐私(LDP)是一种用于收集用户敏感信息的强隐私标准。虽然近年来引起了许多研究的关注,但现有的大部分工作都集中在将LDP应用于离散域中每个单独值的频率分布估计上。本文研究涉及多个离散值的重要值域查询。到目前为止,针对这一问题的研究还不多。它们都依赖于B-ary树来构建统一的分层分解,以减少回答大范围查询时的误差。然而,统一分割的方式忽略了分解子域的属性,不加偏好地对它们进行平等处理,导致了严重的性能损失。在本文中,我们正面解决了这个问题:我们提出的privNUD是一种新的领域分层分解机制。它将每个具有定制粒度的域动态分解为一些子域,从而敏感地考虑回答一个范围查询的潜在机会。为了获得更好的性能,我们仔细分析了粒度问题。它还可以巧妙地对频率较小的子域进行修剪。此外,设计了一种自适应用户分配技术,动态确定各子域频率估计所涉及的用户规模。使用真实和合成数据集的大量实验表明,与最新的解决方案相比,privNUD实现了显着更高的结果准确性。
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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