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Differentially Private Accelerated Optimization Algorithms

Nurdan Kuru, Ş. İlker Birbil, Mert Gürbüzbalaban, Sinan Yıldırım

2022SIAM Journal on Optimization13 citationsDOIOpen Access PDF

Abstract

We present two classes of differentially private optimization algorithms derived from the well-known accelerated first-order methods. The first algorithm is inspired by Polyak's heavy ball method and employs a smoothing approach to decrease the accumulated noise on the gradient steps required for differential privacy. The second class of algorithms are based on Nesterov's accelerated gradient method and its recent multistage variant. We propose a noise dividing mechanism for the iterations of Nesterov's method in order to improve the error behavior of the algorithm. The convergence rate analyses are provided for both the heavy ball and the Nesterov's accelerated gradient method with the help of the dynamical system analysis techniques. Finally, we conclude with our numerical experiments showing that the presented algorithms have advantages over the well-known differentially private algorithms.

Topics & Concepts

Differential privacyAlgorithmRate of convergenceSmoothingBall (mathematics)Convergence (economics)MathematicsGradient methodProximal Gradient MethodsNoise (video)Mathematical optimizationComputer scienceArtificial intelligenceGradient descentArtificial neural networkKey (lock)Computer securityImage (mathematics)Economic growthStatisticsEconomicsMathematical analysisStochastic Gradient Optimization TechniquesPrivacy-Preserving Technologies in DataCryptography and Data Security
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