在量子退火炉上寻找最大团

Guillaume Chapuis, H. Djidjev, Georg Hahn, Guillaume Rizk
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引用次数: 23

摘要

本文评估了D-Wave 2X (DW)量子退火机在图中寻找最大团的性能,这是最基本和最重要的NP-hard问题之一。由于DW可以直接解决的最大图的大小非常小(通常在45个顶点左右),我们还考虑用于较大图的分解算法并分析其性能。对于适合DW的较小图,我们将最大团问题的公式提供为二次无约束二进制优化(QUBO)问题,这是机器可接受的两种输入类型之一(以及Ising模型),并将几种量子实现与当前的经典算法(如模拟退火,Gurobi和第三方团查找启发式算法)进行比较。我们进一步估计了量子退火器的量子相位和典型的用于增强DW返回的每个溶液的经典后处理相位的贡献。我们证明了在适合DW的随机图上,与经典算法相比,没有量子加速。另一方面,对于专门设计用于很好地适应DW量子比特互连网络的实例,我们观察到与经典方法相比,计算时间有很大的加快。
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Finding Maximum Cliques on a Quantum Annealer
This paper assesses the performance of the D-Wave 2X (DW) quantum annealer for finding a maximum clique in a graph, one of the most fundamental and important NP-hard problems. Because the size of the largest graphs DW can directly solve is quite small (usually around 45 vertices), we also consider decomposition algorithms intended for larger graphs and analyze their performance. For smaller graphs that fit DW, we provide formulations of the maximum clique problem as a quadratic unconstrained binary optimization (QUBO) problem, which is one of the two input types (together with the Ising model) acceptable by the machine, and compare several quantum implementations to current classical algorithms such as simulated annealing, Gurobi, and third-party clique finding heuristics. We further estimate the contributions of the quantum phase of the quantum annealer and the classical post-processing phase typically used to enhance each solution returned by DW. We demonstrate that on random graphs that fit DW, no quantum speedup can be observed compared with the classical algorithms. On the other hand, for instances specifically designed to fit well the DW qubit interconnection network, we observe substantial speed-ups in computing time over classical approaches.
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