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Sketchy Decisions: Convex Low-Rank Matrix Optimization with Optimal Storage

机译:粗略的决策:具有最佳存储的凸低秩矩阵优化

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摘要

This paper concerns a fundamental class of convex matrix optimization problems. It presents the first algorithm that uses optimal storage and provably computes a low-rank approximation of a solution. In particular, when all solutions have low rank, the algorithm converges to a solution. This algorithm, SketchyCGM, modifies a standard convex optimization scheme, the conditional gradient method, to store only a small randomized sketch of the matrix variable. After the optimization terminates, the algorithm extracts a low-rank approximation of the solution from the sketch. In contrast to nonconvex heuristics, the guarantees for SketchyCGM do not rely on statistical models for the problem data. Numerical work demonstrates the benefits of SketchyCGM over heuristics.
机译:本文涉及一类凸矩阵优化问题。它提出了第一种使用最佳存储并可证明计算出解决方案的低秩近似的算法。特别是,当所有解的秩都较低时,该算法会收敛为一个解。此算法SketchyCGM修改了标准凸优化方案(即条件梯度法),以仅存储矩阵变量的随机小草图。优化终止后,算法从草图中提取解的低秩近似。与非凸型启发式方法相比,SketchyCGM的保证不依赖于问题数据的统计模型。数值研究证明了SketchyCGM优于启发式算法的优势。

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