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Distributed Optimization with Feasible Set Privacy

Abstract

We consider the setup of a constrained optimization problem with two agents E1E_1 and E2E_2 who jointly wish to learn the optimal solution set while keeping their feasible sets P1\mathcal{P}_1 and P2\mathcal{P}_2 private from each other. The objective function ff is globally known and each feasible set is a collection of points from a global alphabet. We adopt a sequential symmetric private information retrieval (SPIR) framework where one of the agents (say E1E_1) privately checks in P2\mathcal{P}_2, the presence of candidate solutions of the problem constrained to P1\mathcal{P}_1 only, while learning no further information on P2\mathcal{P}_2 than the solution alone. Further, we extract an information theoretically private threshold PSI (ThPSI) protocol from our scheme and characterize its download cost. We show that, compared to privately acquiring the feasible set P1P2\mathcal{P}_1\cap \mathcal{P}_2 using an SPIR-based private set intersection (PSI) protocol, and finding the optimum, our scheme is better as it incurs less information leakage and less download cost than the former. Over all possible uniform mappings of ff to a fixed range of values, our scheme outperforms the former with a high probability.

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