Initial State Encoding via Reverse Quantum Annealing and H-Gain Features

Elijah Pelofske;Georg Hahn;Hristo Djidjev
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引用次数: 1

Abstract

Quantum annealing is a specialized type of quantum computation that aims to use quantum fluctuations in order to obtain global minimum solutions of combinatorial optimization problems. Programmable D-Wave quantum annealers are available as cloud computing resources, which allow users low-level access to quantum annealing control features. In this article, we are interested in improving the quality of the solutions returned by a quantum annealer by encoding an initial state into the annealing process. We explore two D-Wave features that allow one to encode such an initial state: the reverse annealing (RA) and the h-gain (HG) features. RA aims to refine a known solution following an anneal path starting with a classical state representing a good solution, going backward to a point where a transverse field is present, and then finishing the annealing process with a forward anneal. The HG feature allows one to put a time-dependent weighting scheme on linear ( $h$ ) biases of the Hamiltonian, and we demonstrate that this feature likewise can be used to bias the annealing to start from an initial state. We also consider a hybrid method consisting of a backward phase resembling RA and a forward phase using the HG initial state encoding. Importantly, we investigate the idea of iteratively applying RA and HG to a problem, with the goal of monotonically improving on an initial state that is not optimal. The HG encoding technique is evaluated on a variety of input problems including the edge-weighted maximum cut problem and the vertex-weighted maximum clique problem, demonstrating that the HG technique is a viable alternative to RA for some problems. We also investigate how the iterative procedures perform for both RA and HG initial state encodings on random whole-chip spin glasses with the native hardware connectivity of the D-Wave Chimera and Pegasus chips.
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基于反向量子退火和h增益特性的初始状态编码
量子退火是一种特殊类型的量子计算,其目的是利用量子涨落来获得组合优化问题的全局最小解。可编程D-Wave量子退火炉可作为云计算资源,允许用户低级访问量子退火控制功能。在本文中,我们感兴趣的是通过将初始状态编码到退火过程中来提高量子退火炉返回的解的质量。我们探索了两个D-Wave特征,允许人们编码这样的初始状态:反向退火(RA)和h-增益(HG)特征。RA的目的是根据退火路径从代表良好解的经典状态开始,向后到存在横向场的点,然后用正向退火完成退火过程,从而改进已知解。HG特征允许人们在哈密顿量的线性($h$)偏差上放置一个时间相关的加权方案,并且我们证明了该特征同样可以用于使退火从初始状态开始。我们还考虑了一种混合方法,包括一个类似于RA的反向相位和一个使用HG初始状态编码的正向相位。重要的是,我们研究了迭代地将RA和HG应用于问题的思想,目标是单调地改进非最优的初始状态。在边缘加权最大割问题和顶点加权最大团问题等多种输入问题上对HG编码技术进行了评价,证明了HG编码技术在某些问题上是替代RA的可行方法。我们还研究了随机全片自旋玻璃上RA和HG初始状态编码的迭代过程如何在D-Wave Chimera和Pegasus芯片的本地硬件连接下执行。
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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