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An exact penalty method for semidefinite-box-constrained low-rank matrix optimization problems

机译:关于半纤维盒约束的低秩矩阵优化问题的确切罚化方法

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This paper considers a matrix optimization problem where the objective function is continuously differentiable and the constraints involve a semidefinite-box constraint and a rank constraint. We first replace the rank constraint by adding a non-Lipschitz penalty function in the objective and prove that this penalty problem is exact with respect to the original problem. Next, for the penalty problem we present a nonmonotone proximal gradient (NPG) algorithm whose subproblem can be solved by Newton's method with globally quadratic convergence. We also prove the convergence of the NPG algorithm to a firstorder stationary point of the penalty problem. Furthermore, based on the NPG algorithm, we propose an adaptive penalty method (APM) for solving the original problem. Finally, the efficiency of an APM is shown via numerical experiments for the sensor network localization problem and the nearest low-rank correlation matrix problem.
机译:本文考虑了矩阵优化问题,其中客观函数是连续可分的,并且约束涉及半纤维盒约束和秩约束。 我们首先通过在目标中添加非Lipschitz惩罚功能来更换等级约束,并证明这一惩罚问题是关于原始问题的精确。 接下来,对于惩罚问题,我们介绍了一个非单调的近端梯度(NPG)算法,其子问题可以通过全局二次收敛的牛顿方法解决。 我们还证明了NPG算法的融合到惩罚问题的第一阶静止点。 此外,基于NPG算法,我们提出了一种用于解决原始问题的自适应惩罚方法(APM)。 最后,通过对传感器网络定位问题的数值实验和最接近的低秩相关矩阵问题示出了APM的效率。

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