论文标题
各种量子电路训练中的突然过渡
Abrupt Transitions in Variational Quantum Circuit Training
论文作者
论文摘要
变异量子算法主导了现代量子处理器的基于门的应用。所谓的,{\ it层次的训练性猜想}出现在整个变化量子计算文献的各种作品中。猜想断言量子电路可以在零件上进行训练,例如,可以序列地训练几层以最大程度地训练目标函数。在这里,我们证明了这个猜想的错误。通过考虑与身份矩阵呈指数级接近的目标函数(在Qubits数量中)找到反例。在有限的环境中,我们发现训练量子电路的能力突然过渡以最小化这些目标功能。具体而言,我们发现,在关键(目标门因)阈值下方,电路训练将终止于身份,并保持靠近身份,以便随后添加了训练有素的块。临界层深度将突然训练任意接近目标,从而最大程度地减少目标函数。这些发现为各种量子电路的分裂训练性训练提供了新的启示,并适用于广泛的当代文献。
Variational quantum algorithms dominate gate-based applications of modern quantum processors. The so called, {\it layer-wise trainability conjecture} appears in various works throughout the variational quantum computing literature. The conjecture asserts that a quantum circuit can be trained piece-wise, e.g.~that a few layers can be trained in sequence to minimize an objective function. Here we prove this conjecture false. Counterexamples are found by considering objective functions that are exponentially close (in the number of qubits) to the identity matrix. In the finite setting, we found abrupt transitions in the ability of quantum circuits to be trained to minimize these objective functions. Specifically, we found that below a critical (target gate dependent) threshold, circuit training terminates close to the identity and remains near to the identity for subsequently added blocks trained piece-wise. A critical layer depth will abruptly train arbitrarily close to the target, thereby minimizing the objective function. These findings shed new light on the divide-and-conquer trainability of variational quantum circuits and apply to a wide collection of contemporary literature.