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首页> 外文期刊>Journal of Optimization Theory and Applications >Dynamic Non-diagonal Regularization in Interior Point Methods for Linear and Convex Quadratic Programming
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Dynamic Non-diagonal Regularization in Interior Point Methods for Linear and Convex Quadratic Programming

机译:线性和凸二次编程内点方法中的动态非对角线规则

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In this paper, we present a dynamic non-diagonal regularization for interior point methods. The non-diagonal aspect of this regularization is implicit, since all the off-diagonal elements of the regularization matrices are cancelled out by those elements present in the Newton system, which do not contribute important information in the computation of the Newton direction. Such a regularization has multiple goals. The obvious one is to improve the spectral properties of the Newton system solved at each iteration of the interior point method. On the other hand, the regularization matrices introduce sparsity to the aforementioned linear system, allowing for more efficient factorizations. We also propose a rule for tuning the regularization dynamically based on the properties of the problem, such that sufficiently large eigenvalues of the non-regularized system are perturbed insignificantly. This alleviates the need of finding specific regularization values through experimentation, which is the most common approach in the literature. We provide perturbation bounds for the eigenvalues of the non-regularized system matrix and then discuss the spectral properties of the regularized matrix. Finally, we demonstrate the efficiency of the method applied to solve standard small- and medium-scale linear and convex quadratic programming test problems.
机译:在本文中,我们为内点方法提供了一种动态的非对角线正规化。该正则化的非对角线方面是隐式的,因为正则化矩阵的所有偏差元素被牛顿系统中存在的那些元素取消,因为在牛顿方向的计算中没有贡献重要信息。这样的正规化有多种目标。显而易见的是提高牛顿系统的光谱特性,在内点法的每次迭代中解决了求助的牛顿系统。另一方面,正则化矩阵将稀疏性引入上述线性系统,从而允许更有效的因素。我们还提出了一项规则,用于基于问题的属性动态调整正则化,使得非规则化系统的足够大的特征值被扰动不合理。这减轻了通过实验找到特定的正则化值的需要,这是文献中最常见的方法。我们为非规则化系统矩阵的特征值提供扰动界限,然后讨论正则化矩阵的光谱特性。最后,我们展示了解决标准小型和中型线性和凸二次编程测试问题的方法的效率。

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