移动轨迹去匿名化的群稀疏张量分解

Takao Murakami, Atsunori Kanemura, H. Hino
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引用次数: 12

摘要

使用个性化转移矩阵的去匿名化攻击是将匿名跟踪与用户联系起来的最成功的方法之一。然而,由于许多用户在日常生活中只向公众披露少量的位置信息,因此对手可以获得的训练数据量可能非常小。本文的目的是量化在这种现实情况下的去匿名化风险。为了实现这一目标,我们利用空间数据可以形成群结构的事实,提出了群稀疏张量分解来训练从少量训练数据中捕获空间群结构的个性化转移矩阵。我们将训练方法应用于去匿名化攻击,并使用Geolife数据集对其进行评估。结果表明,使用张量分解的训练方法优于极大似然估计方法,并通过加入群稀疏正则化进一步改进了训练方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Group Sparsity Tensor Factorization for De-anonymization of Mobility Traces
The de-anonymization attack using personalized transition matrices is known as one of the most successful approaches to link anonymized traces with users. However, since many users disclose only a small amount of location information to the public in their daily lives, the amount of training data available to the adversary can be very small. The aim of this paper is to quantify the risk of de-anonymization in this realistic situation. To achieve this aim, we utilize the fact that spatial data can form group structure, and propose group sparsity tensor factorization to train the personalized transition matrices that capture spatial group structure from a small amount of training data. We apply our training method to the de-anonymization attack, and evaluate it using the Geolife dataset. The results show that the training method using tensor factorization outperforms the Maximum Likelihood estimation method, and is further improved by incorporating group sparsity regularization.
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