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Privacy on the Edge: Customizable Privacy-Preserving Context Sharing in Hierarchical Edge Computing

机译:边缘隐私:分层边缘计算中的可自定义隐私保留上下文共享

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摘要

The booming of edge computing enables and reshapes this big data era. However, privacy issues arise because increasing volume of data are published per second while the edge devices can only provide limited computing and storage resources. In addition, this has been aggravated by new emerging features of edge computing, such as decentralized and hierarchical infrastructure, mobility, and content-aware applications. Although some existing privacy preserving methods are extended to this domain, the privacy issues of data dissemination between multiple edge nodes and end users is barely studied. Motivated by this, we propose a dynamic customizable privacy-preserving model based on Markov decision process to obtain the optimized trade-off between customizable privacy protection and data utility. We start with establishing a game model between users and adversaries based on a QoS-based payoff function. A modified reinforcement learning algorithm is deployed to derive the exclusive Nash Equilibrium. Furthermore, the model can achieve fast convergence by the reduction of cardinality from n to 2. Extensive experimental results confirm the significance of the proposed model comparing to the existing work both in terms of effectiveness and feasibility.
机译:边缘计算的蓬勃发展是启用和重塑此大数据时代。但是,由于每秒发布的数据量增加,因此出现隐私问题,而边缘设备只能提供有限的计算和存储资源。此外,这已被Edge Computing的新兴功能加剧,例如分散和分层基础设施,移动性和内容感知应用程序。虽然一些现有的隐私保留方法扩展到该域,但几乎没有研究多个边缘节点和最终用户之间的数据传播的隐私问题。由此激励,我们提出了一种基于Markov决策过程的动态可定制的隐私保留模型,以获取可自定义的隐私保护和数据实用程序之间的优化权衡。我们首先基于基于QoS的收益函数在用户与对手之间建立游戏模型。部署修改的强化学习算法以导出独家纳什均衡。此外,该模型可以通过从N到2的基数的减少来实现快速的收敛性。广泛的实验结果证实了所提出的模型与现有工作的重要性,在有效性和可行性方面。

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