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An efficient primal-dual interior-point method for minimizing a sum of Euclidean norms

机译:最小化欧几里得范数之和的有效原始对偶内点法

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The problem of minimizing a sum of Euclidean norms dates from the 17th century and may be the earliest example of duality in the mathematical programming literature. This nonsmooth optimization problem arises in many different kinds of modern scientific applications. We derive a primal-dual interior-point algorithm for the problem, by applying Newton's method directly to a system of nonlinear equations characterizing primal and dual feasibility and a perturbed complementarity condition. The main work at each step consists of solving a system of linear equations (the Schur complement equations). This Schur complement matrix is not symmetric, unlike in linear programming. We incorporate a Mehrotra-type predictor-corrector scheme and present some experimental results comparing several variations of the algorithm, including, as one option, explicit symmetrization of the Schur complement with a skew corrector term. We also present results obtained from a code implemented to solve large sparse problems, using a symmetrized Schur complement. This has been applied to problems arising in plastic collapse analysis, with hundreds of thousands of variables and millions of nonzeros in the constraint matrix. The algorithm typically finds accurate solutions in less than 50 iterations and determines physically meaningful solutions previously unobtainable. [References: 34]
机译:使欧几里得范数的总和最小化的问题可以追溯到17世纪,并且可能是数学编程文献中最早的对偶性例子。这种不平滑的优化问题出现在许多不同种类的现代科学应用中。通过将牛顿方法直接应用于表征原始和对偶可行性以及扰动互补条件的非线性方程组,我们导出了该问题的原始对偶内点算法。每个步骤的主要工作包括求解线性方程组(舒尔补码方程)。与线性编程不同,此Schur补矩阵不是对称的。我们结合了Mehrotra型预测器-校正器方案,并提供了一些实验结果,比较了该算法的几种变体,其中包括作为一种选择,将Schur补语与偏斜校正器项明确对称。我们还介绍了使用对称Schur补码从为解决大型稀疏问题而实现的代码中获得的结果。这已应用于塑性塌陷分析中出现的问题,约束矩阵中包含成千上万个变量和数百万个非零。该算法通常在少于50次迭代中找到准确的解,并确定以前无法获得的对物理有意义的解。 [参考:34]

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