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arxiv: 1811.03129 · v2 · pith:KTHZZN3Ynew · submitted 2018-11-07 · 🧮 math.OC · cs.LG· stat.ML

Global Optimality in Distributed Low-rank Matrix Factorization

classification 🧮 math.OC cs.LGstat.ML
keywords distributedlow-rankmatrixproblemapproximationconsensusappearcentralized
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We study the convergence of a variant of distributed gradient descent (DGD) on a distributed low-rank matrix approximation problem wherein some optimization variables are used for consensus (as in classical DGD) and some optimization variables appear only locally at a single node in the network. We term the resulting algorithm DGD+LOCAL. Using algorithmic connections to gradient descent and geometric connections to the well-behaved landscape of the centralized low-rank matrix approximation problem, we identify sufficient conditions where DGD+LOCAL is guaranteed to converge with exact consensus to a global minimizer of the original centralized problem. For the distributed low-rank matrix approximation problem, these guarantees are stronger---in terms of consensus and optimality---than what appear in the literature for classical DGD and more general problems.

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