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A differential privacy-based privacy-preserving data publishing algorithm for transit smart card data

机译:基于差异隐私的隐私保留数据发布数据发布算法,用于过境智能卡数据

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摘要

This manuscript is focused on transit smart card data and finds that the release of such trajectory information after simple anonymization creates high concern about breaching privacy. Trajectory data is large-scale, high-dimensional, and sparse in nature and, thus, requires an efficient privacy-preserving data publishing (PPDP) algorithm with high data utility. This paper describes the investigation of the publication of non-interactive sanitized trajectory data under a Differential Privacy (DP) definition. To this end, a new prefix tree structure, an incremental privacy budget allocation model, and a spatial-temporal dimensionality reduction model are proposed to enhance the sanitized data utility as well as to improve runtime efficiency. The developed algorithm is implemented and applied to real-life metro smart card data from Shenzhen, China, which includes a total of 2.8 million individual travelers and over 220 million records. Numerical analysis finds that, compared with previous work, the proposed model outputs sanitized dataset with higher utilities, and the algorithm is more efficient and scalable.
机译:此稿件专注于运输智能卡数据,并发现在简单匿名化后发布此类轨迹信息会对违反违反隐私创造高度关注。轨迹数据是大规模的,高维度和稀疏性质,因此需要具有高数据实用程序的有效的隐私保留数据发布(PPDP)算法。本文介绍了在差异隐私(DP)定义下出版非交互式消毒轨迹数据的调查。为此,提出了一种新的前缀树结构,增量隐私预算分配模型和空间 - 时间维数减少模型,以增强消毒数据实用程序,并提高运行时效率。开发的算法实施并应用于中国深圳的现实生活地铁智能卡数据,总共包括280万个个人旅行者和超过220万令吉的记录。数值分析发现,与以前的工作相比,所提出的模型输出具有更高实用程序的消毒数据集,算法更有效和可扩展。

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