论文标题
嘈杂的高斯玻色子抽样中的选拔后:部分比整体更好
Post-selection in noisy Gaussian boson sampling: part is better than whole
论文作者
论文摘要
高斯玻色子采样最初提议用量子线性光学元件显示量子优势。最近,已经提出了基于高斯玻色子采样的一些实验突破,指出指向量子计算至上的量子。但是,由于技术局限性,高斯玻色子采样装置的结果受到光子损失的严重影响。在这里,我们提出了一种有效且实用的方法,可以减少由光子丢失引起的负面影响。在没有硬件修改的情况下,我们的方法采用了数据后选择过程,该过程根据我们的标准丢弃低质量数据以提高最终计算结果的性能,例如部分比整体更好。例如,我们表明,选择后方法可以将GBS实验转换为``非经典测试''的GBS实验,将其转换为可以通过该测试的实验。除了改善当前GBS设备的计算结果的鲁棒性外,这种光子损耗缓解方法还可以使基于GBS基于GBS的量子算法的进一步开发受益。
Gaussian boson sampling is originally proposed to show quantum advantage with quantum linear optical elements. Recently, several experimental breakthroughs based on Gaussian boson sampling pointing to quantum computing supremacy have been presented. However, due to technical limitations, the outcomes of Gaussian boson sampling devices are influenced severely by photon loss. Here, we present an efficient and practical method to reduce the negative effect caused by photon loss. With no hardware modifications, our method takes the data post-selection process that discards low-quality data according to our criterion to improve the performance of the final computational results, say part is better than whole. As an example, we show that the post-selection method can turn a GBS experiment that would otherwise fail in a ``non-classical test" into one that can pass that test. Besides improving the robustness of computation results of current GBS devices, this photon loss mitigation method may also benefit the further development of GBS-based quantum algorithms.