二次优化中退化的多面

D. Drusvyatskiy, Henry Wolkowicz
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引用次数: 67

摘要

Slater条件——存在一个“严格可行解”——是二次优化中的一个常见假设。如果没有严格的可行性,一阶最优性条件可能是没有意义的,对偶问题可能产生很少关于原始的信息,并且数据的微小变化可能使问题不可行。因此,严格可行性的失败会对现有的数值方法产生负面影响,特别是原始对偶内点法。新的优化建模技术和硬非凸问题的凸松弛表明,严格可行性的丧失是一个比以前认识到的更为明显的现象。在本文中,我们描述了失去严格可行性的各种原因,无论是由于糟糕的建模选择还是(更有趣的是)丰富的底层结构,并讨论了处理它的方法,以及在许多明显的情况下,如何将其用作优势。在很大程度上,我们强调面部还原预处理技术,因为它的数学优雅,几何透明度和计算潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Many Faces of Degeneracy in Conic Optimization
Slater's condition -- existence of a "strictly feasible solution" -- is a common assumption in conic optimization. Without strict feasibility, first-order optimality conditions may be meaningless, the dual problem may yield little information about the primal, and small changes in the data may render the problem infeasible. Hence, failure of strict feasibility can negatively impact off-the-shelf numerical methods, such as primal-dual interior point methods, in particular. New optimization modelling techniques and convex relaxations for hard nonconvex problems have shown that the loss of strict feasibility is a more pronounced phenomenon than has previously been realized. In this text, we describe various reasons for the loss of strict feasibility, whether due to poor modelling choices or (more interestingly) rich underlying structure, and discuss ways to cope with it and, in many pronounced cases, how to use it as an advantage. In large part, we emphasize the facial reduction preprocessing technique due to its mathematical elegance, geometric transparency, and computational potential.
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