Recent Advances of Differential Privacy in Centralized Deep Learning: A Systematic Survey
It provides a comprehensive overview for researchers and practitioners working on data protection in machine learning, but it is incremental as a survey.
This survey systematically reviews recent advances in differentially private centralized deep learning, addressing topics such as privacy-utility trade-offs, threat protection, and emerging applications.
Differential Privacy has become a widely popular method for data protection in machine learning, especially since it allows formulating strict mathematical privacy guarantees. This survey provides an overview of the state-of-the-art of differentially private centralized deep learning, thorough analyses of recent advances and open problems, as well as a discussion of potential future developments in the field. Based on a systematic literature review, the following topics are addressed: auditing and evaluation methods for private models, improvements of privacy-utility trade-offs, protection against a broad range of threats and attacks, differentially private generative models, and emerging application domains.