论文标题
量子强化在硬件错误下学习的鲁棒性
Robustness of quantum reinforcement learning under hardware errors
论文作者
论文摘要
变分量子机学习算法已成为有关如何利用近期量子设备进行机器学习任务的最新研究重点。它们被认为是适合此的,因为运行的电路可以定制为设备,并且计算的很大一部分被委派给经典优化器。还假设,由于它们的混合性质,它们可能比传统算法更强大。但是,在硬件引起的噪声影响下训练量子机学习模型的效果尚未得到广泛的研究。在这项工作中,我们通过在存在各种噪声源的存在下研究其性能:射击噪声,相干和不相互的错误,以解决特定类型的学习,即变异的增强学习。我们通过分析和经验研究如何在训练和评估方差量子增强学习算法中噪声的存在如何影响学术策略的性能和鲁棒性。此外,我们提供了一种使用算法的固有结构来减少训练Q学习剂所需的测量数量的方法。
Variational quantum machine learning algorithms have become the focus of recent research on how to utilize near-term quantum devices for machine learning tasks. They are considered suitable for this as the circuits that are run can be tailored to the device, and a big part of the computation is delegated to the classical optimizer. It has also been hypothesized that they may be more robust to hardware noise than conventional algorithms due to their hybrid nature. However, the effect of training quantum machine learning models under the influence of hardware-induced noise has not yet been extensively studied. In this work, we address this question for a specific type of learning, namely variational reinforcement learning, by studying its performance in the presence of various noise sources: shot noise, coherent and incoherent errors. We analytically and empirically investigate how the presence of noise during training and evaluation of variational quantum reinforcement learning algorithms affect the performance of the agents and robustness of the learned policies. Furthermore, we provide a method to reduce the number of measurements required to train Q-learning agents, using the inherent structure of the algorithm.