Privacy-Aware Adversarial Network in Human Mobility Prediction

Yuting Zhan, Hamed Haddadi, Afra Mashhadi
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引用次数: 1

Abstract

As mobile devices and location-based services are increasingly developed in different smart city scenarios and applications, many unexpected privacy leakages have arisen due to geolocated data collection and sharing. User re-identification and other sensitive inferences are major privacy threats when geolocated data are shared with cloud-assisted applications. Significantly, four spatio-temporal points are enough to uniquely identify 95% of the individuals, which exacerbates personal information leakages. To tackle malicious purposes such as user re-identification, we propose an LSTM-based adversarial mechanism with representation learning to attain a privacy-preserving feature representation of the original geolocated data (i.e., mobility data) for a sharing purpose. These representations aim to maximally reduce the chance of user re-identification and full data reconstruction with a minimal utility budget (i.e., loss). We train the mechanism by quantifying privacy-utility trade-off of mobility datasets in terms of trajectory reconstruction risk, user re-identification risk, and mobility predictability. We report an exploratory analysis that enables the user to assess this trade-off with a specific loss function and its weight parameters. The extensive comparison results on four representative mobility datasets demonstrate the superiority of our proposed architecture in mobility privacy protection and the efficiency of the proposed privacy-preserving features extractor. We show that the privacy of mobility traces attains decent protection at the cost of marginal mobility utility. Our results also show that by exploring the Pareto optimal setting, we can simultaneously increase both privacy (45%) and utility (32%).
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隐私感知对抗网络在人类移动预测中的应用
随着移动设备和基于位置的服务在不同智慧城市场景和应用中的日益发展,由于地理位置数据的收集和共享,产生了许多意想不到的隐私泄露。当与云辅助应用程序共享地理定位数据时,用户重新识别和其他敏感推断是主要的隐私威胁。值得注意的是,四个时空点足以唯一识别95%的个体,这加剧了个人信息的泄露。为了解决用户重新识别等恶意目的,我们提出了一种基于lstm的对抗机制,并结合表示学习来获得原始地理位置数据(即移动数据)的隐私保护特征表示,以实现共享目的。这些表示旨在以最小的效用预算(即损失)最大限度地减少用户重新识别和完整数据重建的机会。我们通过在轨迹重建风险、用户重新识别风险和移动可预测性方面量化移动数据集的隐私-效用权衡来训练机制。我们报告了一项探索性分析,使用户能够通过特定的损失函数及其权重参数评估这种权衡。在四个代表性的移动数据集上进行了广泛的比较,结果表明了我们提出的架构在移动隐私保护方面的优越性以及所提出的隐私保护特征提取器的有效性。我们表明,以边际移动效用为代价,移动轨迹的隐私得到了良好的保护。我们的结果还表明,通过探索帕累托最优设置,我们可以同时增加隐私(45%)和效用(32%)。
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