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A product-form Cholesky factorization method for handling dense columns in interior point methods for linear programming

机译:线性编程内点法中用于处理稠密列的乘积形式的Cholesky因式分解方法

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Cholesky factorization has become the method of choice for solving the symmetric system of linear equations arising in interior point methods (IPMs) for linear programming (LP), its main advantages being numerical stability and efficiency for sparse systems. However in the presence of dense columns there is dramatic loss of efficiency. A typical approach to remedy this problem is to apply the Sherman-Morrison-Woodbury (SMW) update formula to the dense part. This approach while being very efficient, is not numerically stable. Here we propose using product-form Cholesky factorization to handle dense columns. The proposed approach is essentially as stable as the original Cholesky factorization and nearly as efficient as the SMW approach. We demonstrate these properties both theoretically and computationally. A key part of our theoretical analysis is the proof that the elements of the Cholesky factors of the matrices that arise in IPMs for LP are uniformly bounded as the duality gap converges to zero. [References: 33]
机译:Cholesky因式分解已成为解决线性规划(LP)的内点法(IPM)中出现的线性方程组对称系统的首选方法,其主要优点是稀疏系统的数值稳定性和效率。但是,在存在高密度色谱柱的情况下,效率会大大降低。解决此问题的一种典型方法是对密集部分应用Sherman-Morrison-Woodbury(SMW)更新公式。这种方法虽然非常有效,但在数值上不稳定。在这里,我们建议使用乘积形式的Cholesky因式分解来处理密集列。所提出的方法基本上与原始的Cholesky分解一样稳定,并且几乎与SMW方法一样有效。我们在理论上和计算上都证明了这些特性。我们的理论分析的关键部分是证明当对偶间隙收敛到零时,在LP的IPM中出现的矩阵的Cholesky因子的元素是一致有界的。 [参考:33]

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