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A Survey on Recent Advances in Privacy Preserving Deep Learning
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作者 Siran Yin Leiming Yan +2 位作者 Yuanmin Shi Yaoyang Hou Yunhong Zhang 《Journal of Information Hiding and Privacy Protection》 2020年第4期175-185,共11页
Deep learning based on neural networks has made new progress in a wide variety of domain,however,it is lack of protection for sensitive information.The large amount of data used for training is easy to cause leakage o... Deep learning based on neural networks has made new progress in a wide variety of domain,however,it is lack of protection for sensitive information.The large amount of data used for training is easy to cause leakage of private information,thus the attacker can easily restore input through the representation of latent natural language.The privacy preserving deep learning aims to solve the above problems.In this paper,first,we introduce how to reduce training samples in order to reduce the amount of sensitive information,and then describe how to unbiasedly represent the data with respect to specific attributes,clarify the research results of other directions of privacy protection and its corresponding algorithms,summarize the common thoughts and existing problems.Finally,the commonly used datasets in the privacy protection research are discussed in this paper. 展开更多
关键词 Deep learning privacy preserving adversarial learning differentia-lly private
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