Ding, LijunYurtsever, AlpCevher, VolkanTropp, Joel A.Udell, Madeleine2022-01-292022-01-292022-01-292021-01-0110.1137/19M1244603https://infoscience.epfl.ch/handle/20.500.14299/184809WOS:000738355700010This paper develops a new storage-optimal algorithm that provably solves almost all semidefinite programs (SDPs). This method is particularly effective for weakly constrained SDPs under appropriate regularity conditions. The key idea is to formulate an approximate complementar-ity principle: Given an approximate solution to the dual SDP, the primal SDP has an approximate solution whose range is contained in the eigenspace with small eigenvalues of the dual slack matrix. For weakly constrained SDPs, this eigenspace has very low dimension, so this observation signifi-cantly reduces the search space for the primal solution. This result suggests an algorithmic strategy that can be implemented with minimal storage: (1) solve the dual SDP approximately; (2) compress the primal SDP to the eigenspace with small eigenvalues of the dual slack matrix; (3) solve the compressed primal SDP. The paper also provides numerical experiments showing that this approach is successful for a range of interesting large-scale SDPs.Mathematics, AppliedMathematicssemidefinite programsstorage optimalitylow rankcomplementary slacknessprimal recoveryinterior-point methodsrankoptimizationalgorithmspowerconvergencenormAn Optimal-Storage Approach to Semidefinite Programming Using Approximate Complementaritytext::journal::journal article::research article