LDP-PPA: Local differential privacy protection for principal component analysis

IF 6.8 1区 计算机科学 0 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shunshun Peng , Haoqi Li , Wenhao Wang , Kai Dong , Mengmeng Yang , Taolin Guo
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引用次数: 0

Abstract

Principal component analysis is a fundamental data analysis task, widely used in various fields of data mining. However, it faces several security threats that pose a potential threat to user privacy. Local differential privacy safeguards individual data while permitting the analysis of global user statistics. In this paper, we propose a local differential privacy-preserving principal component analysis method, named LDP-PPA. LDP-PPA provides local differential privacy protection for computing attribute means and user covariance matrices in principal component analysis but suffers serious challenges. For the attribute mean computation, due to the heterogeneity between different attributes, adding the same level of differential privacy noise to different attributes results in different levels of impact. To address this challenge, LDP-PPA maps heterogeneous attribute data to homogeneous data space and perturbs the mapped data in that space through the truncated Laplace mechanism. For user covariance matrix computation, local differential privacy noise can destroy the correlation among data, significantly impacting the accuracy of covariance matrix computations. To address this challenge, LDP-PPA divides the attribute perturbation intervals into high-functionality and low-functionality categories, maintaining the correlation among perturbed data by boosting the likelihood that perturbation outcomes fall within the high-functionality intervals. In addition, we theoretically analyze the privacy of LDP-PPA. Finally, we conducted experimental comparisons of LDP-PPA against existing methods using three publicly available datasets. The results demonstrate that LDP-PPA significantly outperforms current methods in both accuracy and the trade-off between privacy and utility.
LDP-PPA:主成分分析的局部差分隐私保护
主成分分析是一项基础数据分析任务,广泛应用于数据挖掘的各个领域。然而,它面临着一些对用户隐私构成潜在威胁的安全威胁。本地差异隐私保护个人数据,同时允许分析全局用户统计数据。本文提出了一种局部差分隐私保护主成分分析方法,命名为LDP-PPA。LDP-PPA在主成分分析中为计算属性均值和用户协方差矩阵提供了局部差分隐私保护,但面临严峻挑战。对于属性均值计算,由于不同属性之间的异质性,对不同属性添加相同程度的差分隐私噪声,影响程度不同。为了应对这一挑战,LDP-PPA将异构属性数据映射到同构数据空间,并通过截断拉普拉斯机制对该空间中的映射数据进行扰动。对于用户协方差矩阵计算,局部差分隐私噪声会破坏数据之间的相关性,严重影响协方差矩阵计算的准确性。为了应对这一挑战,LDP-PPA将属性扰动区间划分为高功能和低功能类别,通过提高扰动结果落在高功能区间内的可能性来保持扰动数据之间的相关性。此外,从理论上分析了LDP-PPA协议的隐私性。最后,我们使用三个公开可用的数据集对LDP-PPA与现有方法进行了实验比较。结果表明,LDP-PPA在准确性和隐私与效用之间的权衡方面都明显优于当前的方法。
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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来源期刊
Information Sciences
Information Sciences 工程技术-计算机:信息系统
CiteScore
14.00
自引率
17.30%
发文量
1322
审稿时长
10.4 months
期刊介绍: Informatics and Computer Science Intelligent Systems Applications is an esteemed international journal that focuses on publishing original and creative research findings in the field of information sciences. We also feature a limited number of timely tutorial and surveying contributions. Our journal aims to cater to a diverse audience, including researchers, developers, managers, strategic planners, graduate students, and anyone interested in staying up-to-date with cutting-edge research in information science, knowledge engineering, and intelligent systems. While readers are expected to share a common interest in information science, they come from varying backgrounds such as engineering, mathematics, statistics, physics, computer science, cell biology, molecular biology, management science, cognitive science, neurobiology, behavioral sciences, and biochemistry.
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