Sensitive attribute privacy preservation of trajectory data publishing based on l-diversity.

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Distributed and Parallel Databases Pub Date : 2021-01-01 Epub Date: 2020-11-17 DOI:10.1007/s10619-020-07318-7
Lin Yao, Zhenyu Chen, Haibo Hu, Guowei Wu, Bin Wu
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引用次数: 9

Abstract

The widely application of positioning technology has made collecting the movement of people feasible for knowledge-based decision. Data in its original form often contain sensitive attributes and publishing such data will leak individuals' privacy. Especially, a privacy threat occurs when an attacker can link a record to a specific individual based on some known partial information. Therefore, maintaining privacy in the published data is a critical problem. To prevent record linkage, attribute linkage, and similarity attacks based on the background knowledge of trajectory data, we propose a data privacy preservation with enhanced l-diversity. First, we determine those critical spatial-temporal sequences which are more likely to cause privacy leakage. Then, we perturb these sequences by adding or deleting some spatial-temporal points while ensuring the published data satisfy our ( L , α , β )-privacy, an enhanced privacy model from l-diversity. Our experiments on both synthetic and real-life datasets suggest that our proposed scheme can achieve better privacy while still ensuring high utility, compared with existing privacy preservation schemes on trajectory.

Abstract Image

Abstract Image

Abstract Image

基于l-多样性的轨迹数据发布敏感属性隐私保护。
定位技术的广泛应用,为基于知识的决策提供了可能。原始形式的数据通常包含敏感属性,发布此类数据将泄露个人隐私。特别是,当攻击者可以根据某些已知的部分信息将记录链接到特定的个人时,就会发生隐私威胁。因此,维护发布数据的隐私性是一个关键问题。为了防止记录链接、属性链接和基于轨迹数据背景知识的相似性攻击,我们提出了一种增强l-多样性的数据隐私保护方法。首先,我们确定了那些更容易导致隐私泄露的关键时空序列。然后,我们通过增加或删除一些时空点来扰动这些序列,同时确保发布的数据满足我们的(L, α, β)隐私模型,这是一种来自L -多样性的增强隐私模型。我们在合成数据集和真实数据集上的实验表明,与现有的轨迹隐私保护方案相比,我们提出的方案可以在保证高效用的同时实现更好的隐私保护。
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来源期刊
Distributed and Parallel Databases
Distributed and Parallel Databases 工程技术-计算机:理论方法
CiteScore
3.50
自引率
0.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: Distributed and Parallel Databases publishes papers in all the traditional as well as most emerging areas of database research, including: Availability and reliability; Benchmarking and performance evaluation, and tuning; Big Data Storage and Processing; Cloud Computing and Database-as-a-Service; Crowdsourcing; Data curation, annotation and provenance; Data integration, metadata Management, and interoperability; Data models, semantics, query languages; Data mining and knowledge discovery; Data privacy, security, trust; Data provenance, workflows, Scientific Data Management; Data visualization and interactive data exploration; Data warehousing, OLAP, Analytics; Graph data management, RDF, social networks; Information Extraction and Data Cleaning; Middleware and Workflow Management; Modern Hardware and In-Memory Database Systems; Query Processing and Optimization; Semantic Web and open data; Social Networks; Storage, indexing, and physical database design; Streams, sensor networks, and complex event processing; Strings, Texts, and Keyword Search; Spatial, temporal, and spatio-temporal databases; Transaction processing; Uncertain, probabilistic, and approximate databases.
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