论文标题

与几何约束优化问题的不精确惩罚分解方法

Inexact Penalty Decomposition Methods for Optimization Problems with Geometric Constraints

论文作者

Lapucci, Matteo, Kanzow, Christian

论文摘要

本文提供了对惩罚分解方案的理论和数值研究,用于解决与几何约束的优化问题的解决方案。特别是,我们考虑了某些情况,其中约束的一部分是非概念且复杂的,例如基数约束,分离程序或涉及等级约束的矩阵问题。通过可变的重复和分解策略,此处介绍的方法明确处理了这些困难的约束,从而产生了相对于它们的可行的迭代,而剩余(标准和刺激性简单)的约束则通过顺序惩罚来解决。事实证明,不精确的优化步骤足以使Exulting算法工作,因此即使具有困难的目标功能,也可以就业。因此,当前的工作是对惩罚分解方法的现有论文的重大概括。另一方面,它与一些最新出版物有关,这些出版物使用增强的拉格朗日构想来通过几何约束来解决优化问题。与这些方法相比,分解想法在数值上表现出了优越性,因为它可以在选择子问题求解器时更加自由,并且由于某些(可能昂贵)的投影步骤的数量大大降低了。对向量和矩阵速度的几个高度复杂的优化问题类别的数值结果表明,当前方法确实非常有效地解决这些问题。

This paper provides a theoretical and numerical investigation of a penalty decomposition scheme for the solution of optimization problems with geometric constraints. In particular, we consider some situations where parts of the constraints are nonconvex and complicated, like cardinality constraints, disjunctive programs, or matrix problems involving rank constraints. By a variable duplication and decomposition strategy, the method presented here explicitly handles these difficult constraints, thus generating iterates which are feasible with respect to them, while the remaining (standard and supposingly simple) constraints are tackled by sequential penalization. Inexact optimization steps are proven sufficient for the esulting algorithm to work, so that it is employable even with difficult objective functions. The current work is therefore a significant generalization of existing papers on penalty decomposition methods. On the other hand, it is related to some recent publications which use an augmented Lagrangian idea to solve optimization problems with geometric constraints. Compared to these methods, the decomposition idea is shown to be numerically superior since it allows much more freedom in the choice of the subproblem solver, and since the number of certain (possibly expensive) projection steps is significantly less. Extensive numerical results on several highly complicated classes of optimization problems in vector and matrix paces indicate that the current method is indeed very efficient to solve these problems.

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