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Privacy-Preserving Distributed Online Optimization Over Unbalanced Digraphs via Subgradient Rescaling

Yongyang Xiong, Jinming Xu, Keyou You, Jianxing Liu, Ligang Wu

2020IEEE Transactions on Control of Network Systems95 citationsDOI

Abstract

In this article, we investigate a distributed online constrained optimization problem with differential privacy where the network is modeled by an unbalanced digraph with a row-stochastic adjacency matrix. To address such a problem, a distributed differentially private algorithm without introducing a trusted third-party is proposed to preserve the privacy of the participating nodes. Under mild conditions, we show that the proposed algorithm attains an O(log T) expected regret bound for strongly convex local cost functions, where T is the time horizon. Moreover, we remove the need for knowing the time horizon T in advance by adopting doubling trick scheme, and derive an O(√T) expected regret bound for general convex local cost functions. Our results coincide with the best theoretical regrets that can be achieved in the state-of-the-art algorithms. Finally, simulation results are conducted to validate the efficiency of our proposed algorithm.

Topics & Concepts

RegretDifferential privacyComputer scienceDigraphUpper and lower boundsAdjacency matrixConvex optimizationSubgradient methodTime horizonAdjacency listConvex functionMathematical optimizationOnline algorithmRegular polygonMathematicsTheoretical computer scienceAlgorithmDiscrete mathematicsMachine learningGeometryGraphMathematical analysisPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesAge of Information Optimization