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一种具有用户级差分隐私的时空数据发布的神经方法。

A Neural Approach to Spatio-Temporal Data Release with User-Level Differential Privacy.

作者信息

Ahuja Ritesh, Zeighami Sepanta, Ghinita Gabriel, Shahabi Cyrus

机构信息

Department of Computer Science, Viterbi School of Engineering, University of Southern California, USA.

College of Science and Engineering, Hamad Bin Khalifa University, Qatar Foundation, Doha, Qatar.

出版信息

Proc ACM Manag Data. 2023 May;1(1). doi: 10.1145/3588701. Epub 2023 May 30.

Abstract

Several companies (e.g., Meta, Google) have initiated "data-for-good" projects where aggregate location data are first sanitized and released publicly, which is useful to many applications in transportation, public health (e.g., COVID-19 spread) and urban planning. is the protection model of choice to ensure the privacy of the individuals who generated the raw location data. However, current solutions fail to preserve data utility when each individual contributes multiple location reports (i.e., under user-level privacy). To offset this limitation, public releases by Meta and Google use high privacy budgets (e.g., ), resulting in poor privacy. We propose a novel approach to release spatio-temporal data privately and accurately. We employ the pattern recognition power of neural networks, specifically variational auto-encoders (VAE), to reduce the noise introduced by DP mechanisms such that accuracy is increased, while the privacy requirement is still satisfied. Our extensive experimental evaluation on real datasets shows the clear superiority of our approach compared to benchmarks.

摘要

几家公司(如Meta、谷歌)已经启动了“数据造福社会”项目,在这些项目中,聚合位置数据首先经过净化处理后再公开发布,这对交通、公共卫生(如新冠病毒传播)和城市规划等许多应用都很有用。 是确保生成原始位置数据的个人隐私的首选保护模型。然而,当每个个体贡献多个位置报告时(即在用户级隐私下),当前的解决方案无法保留数据效用。为了弥补这一限制,Meta和谷歌的公开发布使用了高隐私预算(例如 ),导致隐私性较差。我们提出了一种新颖的方法来私下准确地发布时空数据。我们利用神经网络(特别是变分自编码器(VAE))的模式识别能力来减少差分隐私(DP)机制引入的噪声,从而提高准确性,同时仍满足隐私要求。我们在真实数据集上进行的广泛实验评估表明,与基准相比,我们的方法具有明显优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/91b4/12309176/1ac646ec0958/nihms-2030798-f0001.jpg

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