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Chordal decomposition in operator-splitting methods for sparse semidefinite programs

机译:稀疏半纤维术计划的操作员分离方法中的曲线分解

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摘要

We employ chordal decomposition to reformulate a large and sparse semidefinite program (SDP), either in primal or dual standard form, into an equivalent SDP with smaller positive semidefinite (PSD) constraints. In contrast to previous approaches, the decomposed SDP is suitable for the application of first-order operator-splitting methods, enabling the development of efficient and scalable algorithms. In particular, we apply the alternating direction method of multipliers (ADMM) to solve decomposed primal- and dual-standard-form SDPs. Each iteration of such ADMM algorithms requires a projection onto an affine subspace, and a set of projections onto small PSD cones that can be computed in parallel. We also formulate the homogeneous self-dual embedding (HSDE) of a primal-dual pair of decomposed SDPs, and extend a recent ADMM-based algorithm to exploit the structure of our HSDE. The resulting HSDE algorithm has the same leading-order computational cost as those for the primal or dual problems only, with the advantage of being able to identify infeasible problems and produce an infeasibility certificate. All algorithms are implemented in the open-source MATLAB solver CDCS. Numerical experiments on a range of large-scale SDPs demonstrate the computational advantages of the proposed methods compared to common state-of-the-art solvers.
机译:我们采用了Chordal分解,以将大型和稀疏的半标题程序(SDP)以原始或双标准形式重新重整为具有较小正半纤维(PSD)约束的等效SDP。与先前的方法相比,分解的SDP适用于应用一阶算子分裂方法,从而实现有效和可扩展的算法。特别地,我们应用乘法器(ADMM)的交替方向方法来解决分解的原始和双标准形式SDP。这种ADMM算法的每次迭代需要投影到仿射子空间,并且将一组投影到可以并行计算的小PSD锥体上。我们还配制了原始 - 双重对分解的SDP的均匀自动双重嵌入(HSDE),并扩展了最近的基于ADMM的算法来利用我们的HSDE的结构。由此产生的HSDE算法具有与原始或双重问题相同的领先订单计算成本,其优点是能够识别不可行的问题并产生不可用证书。所有算法都在开源Matlab求解器CDC中实现。与常见的最先进的求解器相比,一系列大规模SDP的数值实验证明了所提出的方法的计算优势。

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