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Distributed Saddle-Point Problems Under Similarity

22 July 2021
Aleksandr Beznosikov
G. Scutari
Alexander Rogozin
Alexander Gasnikov
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Abstract

We study solution methods for (strongly-)convex-(strongly)-concave Saddle-Point Problems (SPPs) over networks of two type - master/workers (thus centralized) architectures and meshed (thus decentralized) networks. The local functions at each node are assumed to be similar, due to statistical data similarity or otherwise. We establish lower complexity bounds for a fairly general class of algorithms solving the SPP. We show that a given suboptimality ϵ>0\epsilon>0ϵ>0 is achieved over master/workers networks in Ω(Δ⋅δ/μ⋅log⁡(1/ε))\Omega\big(\Delta\cdot \delta/\mu\cdot \log (1/\varepsilon)\big)Ω(Δ⋅δ/μ⋅log(1/ε)) rounds of communications, where δ>0\delta>0δ>0 measures the degree of similarity of the local functions, μ\muμ is their strong convexity constant, and Δ\DeltaΔ is the diameter of the network. The lower communication complexity bound over meshed networks reads Ω(1/ρ⋅δ/μ⋅log⁡(1/ε))\Omega\big(1/{\sqrt{\rho}} \cdot {\delta}/{\mu}\cdot\log (1/\varepsilon)\big)Ω(1/ρ​⋅δ/μ⋅log(1/ε)), where ρ\rhoρ is the (normalized) eigengap of the gossip matrix used for the communication between neighbouring nodes. We then propose algorithms matching the lower bounds over either types of networks (up to log-factors). We assess the effectiveness of the proposed algorithms on a robust logistic regression problem.

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