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Large-scale semidefinite programming via a saddle point Mirror-Prox algorithm
Authors:Zhaosong Lu  Arkadi Nemirovski  Renato D. C. Monteiro
Affiliation:(1) Department of Mathematics, Simon Fraser University, 8888 University Drive, Burnaby, BC, V5A 156, Canada;(2) School of Industrial and Systems Engineering, Georgia Institute of Technology, Atlanta, GA 30332, USA
Abstract:In this paper, we first demonstrate that positive semidefiniteness of a large well-structured sparse symmetric matrix can be represented via positive semidefiniteness of a bunch of smaller matrices linked, in a linear fashion, to the matrix. We derive also the “dual counterpart” of the outlined representation, which expresses the possibility of positive semidefinite completion of a well-structured partially defined symmetric matrix in terms of positive semidefiniteness of a specific bunch of fully defined submatrices of the matrix. Using the representations, we then reformulate well-structured large-scale semidefinite problems into smooth convex–concave saddle point problems, which can be solved by a Prox-method developed in [6] with efficiency $$mathcal {O}(epsilon^{-1})$$. Implementations and some numerical results for large-scale Lovász capacity and MAXCUT problems are finally presented.
Keywords:Semidefinite programming  Saddle point problem  Mirror-Prox method
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