4.6 Article

A survey on privacy inference attacks and defenses in cloud-based Deep Neural Network

Journal

COMPUTER STANDARDS & INTERFACES
Volume 83, Issue -, Pages -

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ELSEVIER
DOI: 10.1016/j.csi.2022.103672

Keywords

Privacy inference attack; Privacy defense; Deep Neural Network; Cloud computing

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This article investigates privacy attacks and defenses in cloud-based neural network services and introduces a new theory called cloud-based ML privacy game to gain a deep understanding of the latest research.
Deep Neural Network (DNN), one of the most powerful machine learning algorithms, is increasingly leveraged to overcome the bottleneck of effectively exploring and analyzing massive data to boost advanced scientific development. It is not a surprise that cloud computing providers offer the cloud-based DNN as an out-of-the-box service. Though there are some benefits from the cloud-based DNN, the interaction mechanism among two or multiple entities in the cloud inevitably induces new privacy risks. This survey presents the most recent findings of privacy attacks and defenses appeared in cloud-based neural network services. We systematically and thoroughly review privacy attacks and defenses in the pipeline of cloud-based DNN service, i.e., data manipulation, training, and prediction. In particular, a new theory, called cloud-based ML privacy game, is extracted from the recently published literature to provide a deep understanding of state-of-the-art research. Finally, the challenges and future work are presented to help researchers to continue to push forward the competitions between privacy attackers and defenders.

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