This paper introduces a new storage-optimal first-order method (FOM), CertSDP, for solving a special class of semidefinite programs (SDPs) to high accuracy. The class of SDPs that we consider, the exact QMP-like SDPs, is characterized by low-rank solutions, a priori knowledge of the restriction of the SDP solution to a small subspace, and standard regularity assumptions such as strict complementarity. Crucially, we show how to use a certificate of strict complementarity to construct a low-dimensional strongly convex minimax problem whose optimizer coincides with a factorization of the SDP optimizer. From an algorithmic standpoint, we show how to construct the necessary certificate and how to solve the minimax problem efficiently. We accompany our theoretical results with preliminary numerical experiments suggesting that CertSDP significantly outperforms current state-of-the-art methods on large sparse exact QMP-like SDPs.
翻译:本文介绍了一种新的储存最优化第一阶方法(FOM),即CertSDP,用于解决特殊类别的半确定程序(SDPs)的精度很高。我们认为的SDP类,确切的QMP式SDPs,其特征为低级解决方案,先验地知道SDP解决方案仅限于一个小型子空间,以及严格的互补性等标准常规假设。关键是,我们展示了如何使用严格互补证书来构建一个低维强的微轴问题,其优化与SDP的优化因子化相吻合。我们从算法角度展示了如何构建必要的证书以及如何有效解决微缩轴问题。我们伴随我们的理论结果的初步数字实验表明,CertSDP明显地超越了大稀有的QMP类SDP的当前状态方法。