Optimizing the Spin Reversal Transform on the D-Wave 2000Q

Elijah Pelofske, Georg Hahn, H. Djidjev
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引用次数: 22

Abstract

Commercial quantum annealers from D-Wave Systems make it possible to obtain approximate solutions of high quality for certain NP-hard problems in nearly constant time. Before solving a problem on D-Wave, several pre-processing methods can be applied, one of them being the so-called spin reversal or gauge transform. The spin reversal transform flips the sign of selected variables and coefficients of the Ising or QUBO (quadratic unconstrained binary optimization) representation of the problem that D-Wave minimizes. The spin reversal transform leaves the ground state of the Ising model invariant, but can average out the biases induced through analog and systematic errors on the device, thus improving the quality of the solution that D-Wave returns. This work investigates the effectiveness of the spin reversal transform for D-Wave 2000Q. We consider two important NP-hard problems, the Maximum Clique and the Minimum Vertex Cover problems, and show on a variety of input problem graphs that using the spin reversal transform can yield substantial improvements in solution quality. In contrast to the native spin reversal built into D-Wave, we consider more general ways to reverse individual spins and we investigate the dependence on the problem type, on the spin reversal probability, and possible advantages of carrying out reversals on the qubit instead of the chain level. Most importantly, for a given individual problem, we use our findings to optimize the spin reversal transform using a genetic optimization algorithm.
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D-Wave 2000Q自旋反转变换的优化
D-Wave系统的商用量子退火器使某些np困难问题在几乎恒定的时间内获得高质量的近似解成为可能。在D-Wave上解决问题之前,可以应用几种预处理方法,其中之一是所谓的自旋反转或规范变换。自旋反转变换翻转了D-Wave最小化问题的Ising或QUBO(二次无约束二进制优化)表示的选定变量和系数的符号。自旋反转变换使伊辛模型的基态保持不变,但可以平均出由设备上的模拟误差和系统误差引起的偏差,从而提高D-Wave返回的解决方案的质量。本文研究了D-Wave 2000Q自旋反转变换的有效性。我们考虑了两个重要的NP-hard问题,即最大团和最小顶点覆盖问题,并在各种输入问题图上展示了使用自旋反转变换可以显著提高解的质量。与D-Wave内置的自旋逆转相比,我们考虑了更一般的方法来逆转单个自旋,我们研究了对问题类型的依赖,对自旋逆转概率的依赖,以及在量子比特而不是链级别上进行逆转的可能优势。最重要的是,对于给定的个体问题,我们使用我们的发现来优化使用遗传优化算法的自旋反转变换。
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[Copyright notice] Entangled State Preparation for Non-Binary Quantum Computing Integrated Photonics Architectures for Residue Number System Computations Experimental Insights from the Rogues Gallery Message from the 2019 ICRC General Co-Chairs
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