The key highlights and insights of the content are:
The authors address the problem of differential privacy for fully distributed optimization subject to a shared inequality constraint. They propose a novel approach that co-designs the distributed optimization mechanism and the differential-privacy noise injection mechanism.
The proposed algorithm can ensure both provable convergence to a global optimal solution and rigorous ε-differential privacy, even when the number of iterations tends to infinity. This is in contrast to existing solutions that have to trade convergence accuracy for differential privacy.
The authors first propose a new constrained consensus algorithm that can achieve rigorous ε-differential privacy while maintaining accurate convergence, which has not been achieved before.
The distributed optimization algorithm can handle non-separable global objective functions and does not require the Lagrangian function to be strictly convex/concave. This is more general than the intensively studied distributed optimization problem with separable objective functions.
The authors develop new proof techniques to analyze the convergence under the entanglement of unbounded differential privacy noises and projection-induced nonlinearity, which are of independent interest.
Numerical simulations on a demand response control problem in smart grid confirm the effectiveness of the proposed approach.
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