论文标题

关于堕落的双重投影问题

On Degenerate Doubly Nonnegative Projection Problems

论文作者

Cui, Ying, Liang, Ling, Sun, Defeng, Toh, Kim-Chuan

论文摘要

双重非负(DNN)锥,是所有元素无负元素的所有正半足质矩阵的集合,是计算上完全棘手的完全正锥的流行近似。实施牛顿型方法来计算给定的大规模矩阵投影到DNN锥上的主要困难在于约束非确定性的失败,这是非线性计划的线性独立性约束资格的概括。这种失败导致非平滑方程式的雅各布的奇异性,代表Karush-kuhn-tucker最佳条件,该条件阻止了半齿牛顿CG方法以理想的收敛速率解决它。在本文中,我们通过求解了由增强的拉格朗日方法(ALM)产生的一系列较好条件的非平滑方程,而不是求解上述单程方程,从而克服了上述难度。通过利用与阳性半圆锥锥相关的正常锥的度量亚规范性,我们得出了足够的条件,以确保潜在问题的双二次二次生长条件,这进一步导致了拟议的ALM的渐近超线性收敛。在困难的随机生成的实例和半决赛编程库上的数值结果显示出来,以证明该算法对计算DNN投影的效率以非常高的精度。

The doubly nonnegative (DNN) cone, being the set of all positive semidefinite matrices whose elements are nonnegative, is a popular approximation of the computationally intractable completely positive cone. The major difficulty for implementing a Newton-type method to compute the projection of a given large scale matrix onto the DNN cone lies in the possible failure of the constraint nondegeneracy, a generalization of the linear independence constraint qualification for nonlinear programming. Such a failure results in the singularity of the Jacobian of the nonsmooth equation representing the Karush-Kuhn-Tucker optimality condition that prevents the semismooth Newton-CG method from solving it with a desirable convergence rate. In this paper, we overcome the aforementioned difficulty by solving a sequence of better conditioned nonsmooth equations generated by the augmented Lagrangian method (ALM) instead of solving one above mentioned singular equation. By leveraging on the metric subregularity of the normal cone associated with the positive semidefinite cone, we derive sufficient conditions to ensure the dual quadratic growth condition of the underlying problem, which further leads to the asymptotically superlinear convergence of the proposed ALM. Numerical results on difficult randomly generated instances and from the semidefinite programming library are presented to demonstrate the efficiency of the algorithm for computing the DNN projection to a very high accuracy.

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