K-Means Clustering with Local Distance Privacy

IF 7.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data Mining and Analytics Pub Date : 2023-08-29 DOI:10.26599/BDMA.2022.9020050
Mengmeng Yang;Longxia Huang;Chenghua Tang
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Abstract

With the development of information technology, a mass of data are generated every day. Collecting and analysing these data help service providers improve their services and gain an advantage in the fierce market competition. K-means clustering has been widely used for cluster analysis in real life. However, these analyses are based on users' data, which disclose users' privacy. Local differential privacy has attracted lots of attention recently due to its strong privacy guarantee and has been applied for clustering analysis. However, existing $K$ -means clustering methods with local differential privacy protection cannot get an ideal clustering result due to the large amount of noise introduced to the whole dataset to ensure the privacy guarantee. To solve this problem, we propose a novel method that provides local distance privacy for users who participate in the clustering analysis. Instead of making the users' records in-distinguish from each other in high-dimensional space, we map the user's record into a one-dimensional distance space and make the records in such a distance space not be distinguished from each other. To be specific, we generate a noisy distance first and then synthesize the high-dimensional data record. We propose a Bounded Laplace Method (BLM) and a Cluster Indistinguishable Method (CIM) to sample such a noisy distance, which satisfies the local differential privacy guarantee and local d E -privacy guarantee, respectively. Furthermore, we introduce a way to generate synthetic data records in high-dimensional space. Our experimental evaluation results show that our methods outperform the traditional methods significantly.
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具有局部距离隐私的K-Means聚类
随着信息技术的发展,每天都会产生大量的数据。收集和分析这些数据有助于服务提供商改善服务,并在激烈的市场竞争中获得优势。K-means聚类在实际生活中被广泛应用于聚类分析。然而,这些分析是基于用户的数据,这些数据披露了用户的隐私。局部差分隐私由于其强大的隐私保障,近年来引起了人们的广泛关注,并被应用于聚类分析。然而,现有的具有局部差分隐私保护的$K$-均值聚类方法由于在整个数据集中引入了大量噪声以确保隐私保证,因此无法获得理想的聚类结果。为了解决这个问题,我们提出了一种新的方法,为参与聚类分析的用户提供本地距离隐私。我们没有在高维空间中使用户的记录相互区分,而是将用户的记录映射到一维距离空间中,并使这种距离空间中的记录不相互区分。具体来说,我们首先生成一个有噪声的距离,然后合成高维数据记录。我们提出了一种有界拉普拉斯方法(BLM)和一种聚类不可分辨方法(CIM)来对这种噪声距离进行采样,分别满足局部差分隐私保证和局部dE隐私保证。此外,我们还介绍了一种在高维空间中生成合成数据记录的方法。我们的实验评估结果表明,我们的方法显著优于传统方法。
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来源期刊
Big Data Mining and Analytics
Big Data Mining and Analytics Computer Science-Computer Science Applications
CiteScore
20.90
自引率
2.20%
发文量
84
期刊介绍: Big Data Mining and Analytics, a publication by Tsinghua University Press, presents groundbreaking research in the field of big data research and its applications. This comprehensive book delves into the exploration and analysis of vast amounts of data from diverse sources to uncover hidden patterns, correlations, insights, and knowledge. Featuring the latest developments, research issues, and solutions, this book offers valuable insights into the world of big data. It provides a deep understanding of data mining techniques, data analytics, and their practical applications. Big Data Mining and Analytics has gained significant recognition and is indexed and abstracted in esteemed platforms such as ESCI, EI, Scopus, DBLP Computer Science, Google Scholar, INSPEC, CSCD, DOAJ, CNKI, and more. With its wealth of information and its ability to transform the way we perceive and utilize data, this book is a must-read for researchers, professionals, and anyone interested in the field of big data analytics.
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