论文标题
强化学习协助递归QAOA
Reinforcement Learning Assisted Recursive QAOA
论文作者
论文摘要
近年来,变异量子算法(例如量子近似优化算法(QAOA))越来越受欢迎,因为它们提供了使用NISQ设备来解决硬组合优化问题的希望。但是,众所周知,在低深度下,QAOA的某些地方限制限制了其性能。为了超越这些局限性,提出了一种非本地变体,即递归QAOA(RQAOA),以提高近似溶液的质量。 RQAOA的研究比QAOA的研究较少,例如,对于哪种情况,它可能无法提供高质量的解决方案。但是,由于我们正在解决$ \ mathsf {np} $ - 硬问题(特别是Ising旋转模型),因此可以预期RQAOA确实会失败,这提出了设计更好的组合优化量子算法的问题。本着这种精神,我们识别和分析RQAOA失败的情况,并基于此提出增强学习增强的RQAOA变体(RL-RQAOA),从而改善了RQAOA。我们表明,RL-RQAOA的性能在RQAOA上的改善:RL-RQAOA在这些确定的实例中,RQAOA表现不佳,并且在RQAOA几乎是最佳的情况下也表现出色。我们的工作体现了增强学习与量子(启发)优化之间的潜在有益的协同作用,这是针对硬性问题的新启发式方法的设计。
Variational quantum algorithms such as the Quantum Approximation Optimization Algorithm (QAOA) in recent years have gained popularity as they provide the hope of using NISQ devices to tackle hard combinatorial optimization problems. It is, however, known that at low depth, certain locality constraints of QAOA limit its performance. To go beyond these limitations, a non-local variant of QAOA, namely recursive QAOA (RQAOA), was proposed to improve the quality of approximate solutions. The RQAOA has been studied comparatively less than QAOA, and it is less understood, for instance, for what family of instances it may fail to provide high quality solutions. However, as we are tackling $\mathsf{NP}$-hard problems (specifically, the Ising spin model), it is expected that RQAOA does fail, raising the question of designing even better quantum algorithms for combinatorial optimization. In this spirit, we identify and analyze cases where RQAOA fails and, based on this, propose a reinforcement learning enhanced RQAOA variant (RL-RQAOA) that improves upon RQAOA. We show that the performance of RL-RQAOA improves over RQAOA: RL-RQAOA is strictly better on these identified instances where RQAOA underperforms, and is similarly performing on instances where RQAOA is near-optimal. Our work exemplifies the potentially beneficial synergy between reinforcement learning and quantum (inspired) optimization in the design of new, even better heuristics for hard problems.