通过结构推理的差分专用网络数据释放

Qian Xiao, Rui Chen, K. Tan
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引用次数: 142

摘要

信息网络,如社交媒体和电子邮件网络,经常包含敏感信息。泄露此类网络数据可能严重危害个人隐私。因此,我们需要在发布之前对网络数据进行清理。在本文中,我们提出了一种新的数据清理解决方案,以一种不同的私有方式推断网络的结构。我们观察到,通过估计顶点之间的连接概率,而不是直接考虑观察到的边缘,可以大大降低差分隐私所带来的噪声尺度。我们提出的方法是利用统计层次随机图(HRG)模型来推断网络结构。差分隐私的保证是通过马尔可夫链蒙特卡罗(MCMC)对模型空间中可能的HRG结构进行采样来实现的。我们从理论上证明了这种推理的灵敏度仅为O(log n),其中n为网络中的顶点数。这个范围意味着注入的噪音要比现有工程的噪音小。我们在四个现实网络数据集上对我们的方法进行了实验评估,并表明我们的解决方案有效地保留了基本的网络结构属性,如度分布、最短路径长度分布和影响节点。
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Differentially private network data release via structural inference
Information networks, such as social media and email networks, often contain sensitive information. Releasing such network data could seriously jeopardize individual privacy. Therefore, we need to sanitize network data before the release. In this paper, we present a novel data sanitization solution that infers a network's structure in a differentially private manner. We observe that, by estimating the connection probabilities between vertices instead of considering the observed edges directly, the noise scale enforced by differential privacy can be greatly reduced. Our proposed method infers the network structure by using a statistical hierarchical random graph (HRG) model. The guarantee of differential privacy is achieved by sampling possible HRG structures in the model space via Markov chain Monte Carlo (MCMC). We theoretically prove that the sensitivity of such inference is only O(log n), where n is the number of vertices in a network. This bound implies less noise to be injected than those of existing works. We experimentally evaluate our approach on four real-life network datasets and show that our solution effectively preserves essential network structural properties like degree distribution, shortest path length distribution and influential nodes.
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KDD '22: The 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Washington, DC, USA, August 14 - 18, 2022 KDD '21: The 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, Singapore, August 14-18, 2021 Mutually Beneficial Collaborations to Broaden Participation of Hispanics in Data Science Bringing Inclusive Diversity to Data Science: Opportunities and Challenges A Causal Look at Statistical Definitions of Discrimination
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