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Scaling linear optimization problems prior to application of the simplex method

机译:在应用单纯形法之前缩放线性优化问题

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The scaling of linear optimization problems, while poorly understood, is definitely not devoid of techniques. Scaling is the most common preconditioning technique utilized in linear optimization solvers, and is designed to improve the conditioning of the constraint matrix and decrease the computational effort for solution. Most importantly, scaling provides a relative point of reference for absolute tolerances. For instance, absolute tolerances are used in the simplex algorithm to determine when a reduced cost is considered to be nonnegative. Existing techniques for obtaining scaling factors for linear systems are investigated herein. With a focus on the impact of these techniques on the performance of the simplex method, we analyze the results obtained from over half a billion simplex computations with CPLEX, MINOS and GLPK, including the computation of the condition number at every iteration. Some of the scaling techniques studied are computationally more expensive than others. For the Netlib and Kennington problems considered herein, it is found that on average no scaling technique outperforms the simplest technique (equilibration) despite the added complexity and computational cost.
机译:线性优化问题的缩放比例虽然了解得很少,但绝对不是缺乏技术。定标是线性优化求解器中最常用的预处理技术,旨在改善约束矩阵的条件并减少求解的计算量。最重要的是,缩放比例为绝对公差提供了相对参考点。例如,在单纯形算法中使用绝对公差来确定何时将降低的成本视为非负成本。本文研究了用于获得线性系统的比例因子的现有技术。着眼于这些技术对单纯形方法性能的影响,我们分析了使用CPLEX,MINOS和GLPK进行的超过十亿次单纯形计算的结果,包括每次迭代条件数的计算。研究的某些缩放技术在计算上比其他技术更昂贵。对于此处考虑的Netlib和Kennington问题,发现尽管增加了复杂性和计算成本,但平均而言,没有缩放技术胜过最简单的技术(均衡)。

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