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An Adaptive and Fast Convergent Approach to Differentially Private Deep Learning

Zhiying Xu, Shuyu Shi, Alex X. Liu, Jun Zhao, Lin Chen

202048 citationsDOI

Abstract

With the advent of the era of big data, deep learning has become a prevalent building block in a variety of machine learning or data mining tasks, such as signal processing, network modeling and traffic analysis, to name a few. The massive user data crowdsourced plays a crucial role in the success of deep learning models. However, it has been shown that user data may be inferred from trained neural models and thereby exposed to potential adversaries, which raises information security and privacy concerns. To address this issue, recent studies leverage the technique of differential privacy to design private-preserving deep learning algorithms. Albeit successful at privacy protection, differential privacy degrades the performance of neural models. In this paper, we develop ADADP, an adaptive and fast convergent learning algorithm with a provable privacy guarantee. ADADP significantly reduces the privacy cost by improving the convergence speed with an adaptive learning rate and mitigates the negative effect of differential privacy upon the model accuracy by introducing adaptive noise. The performance of ADADP is evaluated on real-world datasets. Experiment results show that it outperforms state-of-the-art differentially private approaches in terms of both privacy cost and model accuracy.

Topics & Concepts

Differential privacyComputer scienceLeverage (statistics)Deep learningArtificial intelligenceMachine learningDeep neural networksInformation privacyConvergence (economics)Big dataArtificial neural networkData miningComputer securityEconomicsEconomic growthPrivacy-Preserving Technologies in DataAdversarial Robustness in Machine LearningCryptography and Data Security
An Adaptive and Fast Convergent Approach to Differentially Private Deep Learning | Litcius