Publication | Closed Access
cpSGD: communication-efficient and differentially-private distributed SGD
163
Citations
28
References
2018
Year
Secure Multi-party ComputationPrivacy ProtectionEngineeringMachine LearningDecentralized PrivacyConstant PrivacyInformation SecurityFederated LearningStochastic Gradient DescentData PrivacyPrivacy-preserving CommunicationComputer ScienceDistributed LearningParallel ComputingDifferential PrivacyPrivacyData SecurityCryptography
Distributed stochastic gradient descent is an important subroutine in distributed learning. A setting of particular interest is when the clients are mobile devices, where two important concerns are communication efficiency and the privacy of the clients. Several recent works have focused on reducing the communication cost or introducing privacy guarantees, but none of the proposed communication efficient methods are known to be privacy preserving and none of the known privacy mechanisms are known to be communication efficient. To this end, we study algorithms that achieve both communication efficiency and differential privacy. For d variables and n ≈ d clients, the proposed method uses O(log log(nd)) bits of communication per client per coordinate and ensures constant privacy. We also improve previous analysis of the Binomial mechanism showing that it achieves nearly the same utility as the Gaussian mechanism, while requiring fewer representation bits, which can be of independent interest.
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