Reducing Binary Quadratic Forms for More Scalable Quantum Annealing

Georg Hahn, H. Djidjev
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引用次数: 11

Abstract

Recent advances in the development of commercial quantum annealers such as the D-Wave 2X allow solving NP-hard optimization problems that can be expressed as quadratic unconstrained binary programs. However, the relatively small number of available qubits (around 1000 for the D-Wave 2X quantum annealer) poses a severe limitation to the range of problems that can be solved. This paper explores the suitability of preprocessing methods for reducing the sizes of the input programs and thereby the number of qubits required for their solution on quantum computers. Such methods allow us to determine the value of certain variables that hold in either any optimal solution (called strong persistencies) or in at least one optimal solution (weak persistencies). We investigate preprocessing methods for two important NP-hard graph problems, the computation of a maximum clique and a maximum cut in a graph. We show that the identification of strong and weak persistencies for those two optimization problems is very instance-specific,but can lead to substantial reductions in the number of variables.
简化二元二次型的更可伸缩量子退火
商业量子退加工机(如D-Wave 2X)的最新进展允许解决NP-hard优化问题,这些问题可以表示为二次型无约束二进制程序。然而,相对较少的可用量子位(D-Wave 2X量子退火器大约1000个)严重限制了可以解决的问题范围。本文探讨了预处理方法的适用性,以减少输入程序的大小,从而减少在量子计算机上解决它们所需的量子位的数量。这些方法允许我们确定某些变量的值,这些变量要么存在于任何最优解(称为强持久性)中,要么存在于至少一个最优解(弱持久性)中。研究了两个重要的NP-hard图问题的预处理方法,即图中最大团和最大割的计算。我们表明,对于这两个优化问题,强持久性和弱持久性的识别是非常具体于实例的,但可以导致变量数量的大量减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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