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Adversarial Privacy-Preserving Graph Embedding Against Inference Attack

机译:嵌入推动攻击的对抗隐私保留图

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摘要

Recently, the surge in popularity of the Internet of Things (IoT), mobile devices, social media, etc., has opened up a large source for graph data. Graph embedding has been proved extremely useful to learn low-dimensional feature representations from graph-structured data. These feature representations can be used for a variety of prediction tasks from node classification to link prediction. However, the existing graph embedding methods do not consider users' privacy to prevent inference attacks. That is, adversaries can infer users' sensitive information by analyzing node representations learned from graph embedding algorithms. In this article, we propose adversarial privacy graph embedding (APGE), a graph adversarial training framework that integrates the disentangling and purging mechanisms to remove users' private information from learned node representations. The proposed method preserves the structural information and utility attributes of a graph while concealing users' private attributes from inference attacks. Extensive experiments on real-world graph data sets demonstrate the superior performance of APGE compared to the state-of-the-arts. Our source code can be found at https://github.com/KaiyangLi1992/Privacy-Preserving-Social-Network-Embedding.
机译:最近,互联网(物联网),移动设备,社交媒体等的普及涌动已经开辟了图形数据的大源。嵌入图已被证明非常有用,无法从图形结构数据中学习低维特征表示。这些特征表示可以用于从节点分类到链接预测的各种预测任务。但是,现有的图形嵌入方法不考虑用户隐私以防止推论攻击。也就是说,对手可以通过分析从图形嵌入算法中学到的节点表示来推断用户的敏感信息。在本文中,我们提出了对抗的隐私图嵌入(APGE),这是一个图形对抗的训练框架,它集成了解除响应和清除机制来从学习的节点表示中删除用户的私人信息。该方法保留了图形的结构信息和实用性属性,同时隐藏用户的私有属性从推理攻击。与现实世界图表数据集的广泛实验展示了与最先进的APGE的优越性。我们的源代码可以在https://github.com/kaiyangli1992/privacy-preserving-social-network-embeddings找到。

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