Oh Changhun, Lim Youngrong, Fefferman Bill, Jiang Liang
Pritzker School of Molecular Engineering, University of Chicago, Chicago, Illinois 60637, USA.
School of Computational Sciences, Korea Institute for Advanced Study, Seoul 02455, Korea.
Phys Rev Lett. 2022 May 13;128(19):190501. doi: 10.1103/PhysRevLett.128.190501.
Boson sampling is a fundamentally and practically important task that can be used to demonstrate quantum supremacy using noisy intermediate-scale quantum devices. In this Letter, we present classical sampling algorithms for single-photon and Gaussian input states that take advantage of a graph structure of a linear-optical circuit. The algorithms' complexity grows as so-called treewidth, which is closely related to the connectivity of a given linear-optical circuit. Using the algorithms, we study approximated simulations for local Haar-random linear-optical circuits. For equally spaced initial sources, we show that, when the circuit depth is less than the quadratic in the lattice spacing, the efficient simulation is possible with an exponentially small error. Notably, right after this depth, photons start to interfere each other and the algorithms' complexity becomes subexponential in the number of sources, implying that there is a sharp transition of its complexity. Finally, when a circuit is sufficiently deep enough for photons to typically propagate to all modes, the complexity becomes exponential as generic sampling algorithms. We numerically implement a likelihood test with a recent Gaussian boson sampling experiment and show that the treewidth-based algorithm with a limited treewidth renders a larger likelihood than the experimental data.
玻色子采样是一项在理论和实践上都很重要的任务,可用于利用有噪声的中尺度量子设备来证明量子优越性。在本信函中,我们提出了针对单光子和高斯输入态的经典采样算法,这些算法利用了线性光学电路的图结构。算法的复杂度随着所谓的树宽增长,而树宽与给定线性光学电路的连通性密切相关。利用这些算法,我们研究了局部哈尔随机线性光学电路的近似模拟。对于等间距的初始源,我们表明,当电路深度小于晶格间距的二次方时,能够以指数级小的误差进行高效模拟。值得注意的是,就在这个深度之后,光子开始相互干涉,算法的复杂度在源的数量上变为亚指数级,这意味着其复杂度存在急剧转变。最后,当电路足够深以至于光子通常能传播到所有模式时,复杂度就会像通用采样算法一样变为指数级。我们用最近的一个高斯玻色子采样实验进行了似然性测试的数值实现,结果表明,具有有限树宽的基于树宽的算法给出的似然性比实验数据更大。