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Fine-Grained Privacy Detection with Graph-Regularized Hierarchical Attentive Representation Learning

机译:具有图形正则化分层细心表示学习的细粒度隐私检测

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摘要

Due to the complex and dynamic environment of social media, user generated contents (UGCs) may inadvertently leak users' personal aspects, such as the personal attributes, relationships and even the health condition, and thus place users at high privacy risks. Limited research efforts, thus far, have been dedicated to the privacy detection from users' unstructured data (i.e., UGCs). Moreover, existing efforts mainly focus on applying conventional machine learning techniques directly to traditional hand-crafted privacy-oriented features, ignoring the powerful representing capability of the advanced neural networks. In light of this, in this article, we present a fine-grained privacy detection network (GrHA) equipped with graph-regularized hierarchical attentive representation learning. In particular, the proposed GrHA explores the semantic correlations among personal aspects with graph convolutional networks to enhance the regularization for the UGC representation learning, and, hence, fulfil effective fine-grained privacy detection. Extensive experiments on a real-world dataset demonstrate the superiority of the proposed model over state-of-the-art competitors in terms of eight standard metrics. As a byproduct, we have released the codes and involved parameters to facilitate the research community.
机译:由于社交媒体的复杂和动态环境,用户生成的内容(UGC)可能会无意中泄漏用户的个人方面,例如个人属性,关系甚至健康状况,从而将用户处于高隐私风险。到目前为止,研究努力有限,从用户的非结构化数据(即,UGCS)中致力于隐私检测。此外,现有努力主要专注于将传统机器学习技术直接应用于传统的手工制作的隐私功能,忽略了先进神经网络的强大代表性能力。鉴于此,在本文中,我们介绍了一个细粒度的隐私检测网络(GRHA),其配备了图形正则化分层细节表示学习。特别是,所提出的GRHA探讨了具有图形卷积网络的个人方面之间的语义相关性,以增强UGC表示学习的正则化,因此满足有效的细粒度隐私检测。在现实世界数据集上的广泛实验证明了在八个标准指标方面的拟议竞争对手的优势。作为副产品,我们已经发布了代码和涉及参数以促进研究界。

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