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Differentially-Private and Trustworthy Online Social Multimedia Big Data Retrieval in Edge Computing

机译:边缘计算中的差异私有和可信赖的在线社交多媒体大数据检索

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The explosive growth of multimedia contents (MCs) in today's mobile social networks has pushed edge computing to face severe security and online big data-processing problems. On the one hand, the edge nodes (ENs) should help mobile users find, cache, and share MCs in the presence of an ever-increasing scale of multimedia big data. On the other hand, how to provide secure MC retrieval schemes to exclude dishonest-and-malicious untrusted ENs and to prevent privacy breaches from honest-but-curious ENs and users is a challenging issue. To tackle these problems, we study the privacy-preserving and trustworthy MCs retrieval system to make personalized MC recommendations from ENs to users with big data support. In our framework, each EN is modeled as a distributed context-aware online learner. ENs collaborate to learn users' preferences based on their contexts and previous behaviors and social intimacy. To support big data analytics, we establish an MC-cluster tree from top to the bottom to handle the dynamically varying cached MC datasets. A differentially private algorithm is proposed to preserve the data privacy among honest-but-curious ENs and users. To guarantee trustworthy edge computing, a trust evaluation mechanism is designed to evaluate the reliability of ENs. We further consider the structure of edge networks to improve the performance of our algorithm. Experimental results validate that our new framework can support increasing multimedia big datasets while striking a balance among privacy-preserving level, Trustworthy level, and caching MC prediction accuracy.
机译:在当今的移动社交网络中,多媒体内容(MC)的爆炸性增长推动了边缘计算面临严峻的安全性和在线大数据处理问题。一方面,在不断增长的多媒体大数据规模下,边缘节点(EN)应帮助移动用户查找,缓存和共享MC。另一方面,如何提供安全的MC检索方案以排除不诚实和恶意的不受信任的EN,以及如何防止诚实但又好奇的EN和用户侵犯隐私,这是一个充满挑战的问题。为了解决这些问题,我们研究了隐私保护和可信赖的MC检索系统,以向EN提出具有个性化的MC推荐给具有大数据支持的用户。在我们的框架中,每个EN都被建模为一个分布式的上下文感知在线学习器。 EN会根据用户的背景,先前的行为和社交亲密感进行协作,以学习用户的偏好。为了支持大数据分析,我们从上到下建立了一个MC群集树,以处理动态变化的缓存MC数据集。提出了一种差分私有算法,以保护诚实但好奇的EN和用户之间的数据隐私。为了保证可信的边缘计算,设计了一种信任评估机制来评估EN的可靠性。我们进一步考虑边缘网络的结构以提高算法的性能。实验结果证明,我们的新框架可以支持不断增长的多媒体大数据集,同时在隐私保护级别,可信赖级别和缓存MC预测准确性之间取得平衡。

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