论文标题
量子层析成像带有张量火车交叉近似
Quantum state tomography with tensor train cross approximation
论文作者
论文摘要
最近已经显示,由一维嘈杂的量子计算机生成的状态由矩阵产品运算符近似,其有限债券尺寸与Qubits的数量无关。我们表明,可以使用称为Tensor Train Cross近似的方法对这种状态进行全量子状态断层扫描。该方法适用于重建全等级密度矩阵,仅需要测量本地运算符,这些量子通常在最先进的实验量子平台中执行。我们的方法所需的状态副本比非结构化状态和局部测量的最著名的断层扫描方法呈指数级。可以通过监督机器学习进一步改善我们重建状态的保真度,而无需要求更多的实验数据。如果可以通过局部减少重建完整状态,则可以实现可扩展的断层扫描。
It has been recently shown that a state generated by a one-dimensional noisy quantum computer is well approximated by a matrix product operator with a finite bond dimension independent of the number of qubits. We show that full quantum state tomography can be performed for such a state with a minimal number of measurement settings using a method known as tensor train cross approximation. The method works for reconstructing full rank density matrices and only requires measuring local operators, which are routinely performed in state-of-art experimental quantum platforms. Our method requires exponentially fewer state copies than the best known tomography method for unstructured states and local measurements. The fidelity of our reconstructed state can be further improved via supervised machine learning, without demanding more experimental data. Scalable tomography is achieved if the full state can be reconstructed from local reductions.