4.7 Article

Privacy Preserving Location Data Publishing: A Machine Learning Approach

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2020.2964658

关键词

k-anonymity; spatiotemporal trajectories; longitudinal dataset; machine learning; privacy preservation

资金

  1. National Key RD Program [2018YFB1004800]

向作者/读者索取更多资源

Publishing datasets is crucial for open data research and government transparency, but can lead to privacy concerns, especially in spatiotemporal trajectory datasets. Applying privacy preserving techniques before publication is essential. This paper introduces a machine learning based framework for anonymizing datasets, improving utility while protecting privacy.
Publishing datasets plays an essential role in open data research and promoting transparency of government agencies. However, such data publication might reveal users' private information. One of the most sensitive sources of data is spatiotemporal trajectory datasets. Unfortunately, merely removing unique identifiers cannot preserve the privacy of users. Adversaries may know parts of the trajectories or be able to link the published dataset to other sources for the purpose of user identification. Therefore, it is crucial to apply privacy preserving techniques before the publication of spatiotemporal trajectory datasets. In this paper, we propose a robust framework for the anonymization of spatiotemporal trajectory datasets termed as machine learning based anonymization (MLA). By introducing a new formulation of the problem, we are able to apply machine learning algorithms for clustering the trajectories and propose to use kk-means algorithm for this purpose. A variation of kk-means algorithm is also proposed to preserve the privacy in overly sensitive datasets. Moreover, we improve the alignment process by considering multiple sequence alignment as part of the MLA. The framework and all the proposed algorithms are applied to T-Drive, Geolife, and Gowalla location datasets. The experimental results indicate a significantly higher utility of datasets by anonymization based on MLA framework.

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