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More Than Privacy: Applying Differential Privacy in Key Areas of Artificial Intelligence

Tianqing Zhu, Dayong Ye, Wei Wang, Wanlei Zhou, Philip S. Yu

2020IEEE Transactions on Knowledge and Data Engineering173 citationsDOIOpen Access PDF

Abstract

Artificial Intelligence (AI) has attracted a great deal of attention in recent years. However, alongside all its advancements, problems have also emerged, such as privacy violations, security issues and model fairness. Differential privacy, as a promising mathematical model, has several attractive properties that can help solve these problems, making it quite a valuable tool. For this reason, differential privacy has been broadly applied in AI but to date, no study has documented which differential privacy mechanisms can or have been leveraged to overcome its issues or the properties that make this possible. In this paper, we show that differential privacy can do more than just preserve privacy. It can also be used to improve security, stabilize learning, build fair models, and impose composition in selected areas of AI. With a focus on regular machine learning, distributed machine learning, deep learning, and multi-agent systems, the purpose of this article is to deliver a new view on many possibilities for improving AI performance with differential privacy techniques.

Topics & Concepts

Differential privacyComputer scienceKey (lock)Focus (optics)Differential (mechanical device)Information privacyArtificial intelligenceComputer securityPrivacy softwarePrivacy protectionComputational intelligenceCryptographyData scienceInformation securityPrivacy by DesignBig dataPrivacy-Preserving Technologies in DataEthics and Social Impacts of AIAdversarial Robustness in Machine Learning