带球约束的非凸二次编程的略微提升凸松弛

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Samuel Burer
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引用次数: 0

摘要

众所周知,对于固定的 m,在 \(\mathbb {R}^n\)中的 m 个球的交点上进行非凸二次函数的全局优化是多项式时间可解的。此外,当 \(m=1\) 时,标准的半有限松弛是精确的。当(m=2)时,最近有研究表明,可以使用一种基于(m=1)情况的两份分条件半定式来构造精确松弛。然而,对于 \(m \ge 3\) 还没有已知的明确的、可操作的、精确的凸表示。在本文中,我们为所有 m 构建了一个新的、多项式大小的半有限松弛,它没有采用析取方法。我们证明我们的松弛对于(m=2)是精确的。然后,对于 \(m \ge 3\), 我们通过经验证明,与现有的松弛方法相比,我们的松弛方法既快又强。松弛的关键思想是将原始问题简单地提升到维度(n, +\, 1)。扩展这个构造:(i)我们证明了在(\Vert x\Vert \le \min \{ 1, g + h^T x \})上的非凸二次规划有一个精确的半有限表示;(ii)我们为在两个椭圆的交点上的二次规划构造了一个新的松弛,它在全局上解决了文献中一个基准集合的所有实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A slightly lifted convex relaxation for nonconvex quadratic programming with ball constraints

A slightly lifted convex relaxation for nonconvex quadratic programming with ball constraints

Globally optimizing a nonconvex quadratic over the intersection of m balls in \(\mathbb {R}^n\) is known to be polynomial-time solvable for fixed m. Moreover, when \(m=1\), the standard semidefinite relaxation is exact. When \(m=2\), it has been shown recently that an exact relaxation can be constructed using a disjunctive semidefinite formulation based essentially on two copies of the \(m=1\) case. However, there is no known explicit, tractable, exact convex representation for \(m \ge 3\). In this paper, we construct a new, polynomially sized semidefinite relaxation for all m, which does not employ a disjunctive approach. We show that our relaxation is exact for \(m=2\). Then, for \(m \ge 3\), we demonstrate empirically that it is fast and strong compared to existing relaxations. The key idea of the relaxation is a simple lifting of the original problem into dimension \(n\, +\, 1\). Extending this construction: (i) we show that nonconvex quadratic programming over \(\Vert x\Vert \le \min \{ 1, g + h^T x \}\) has an exact semidefinite representation; and (ii) we construct a new relaxation for quadratic programming over the intersection of two ellipsoids, which globally solves all instances of a benchmark collection from the literature.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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