量子计算机的动态输出状态分类

Héctor D. Menéndez, Luciano Bello, David Clark
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引用次数: 1

摘要

量子计算机有望在物理、化学、密码学、优化和机器学习等领域提供一种潜在的颠覆性方法来改进计算。然而,由于与输出相关的噪声和错误的存在,测试量子计算的故障目前是不切实际的。在量子系统中执行只有少数有效输出状态的电路可以产生大量在理想计算中概率为零的不可信状态。在其他噪声源中,读出误差来自于难以区分不同量子位的0和1之间的测量值。这些问题受到读数漂移的影响,需要定期重新校准过程。在本文中,我们提供了一种新的输出概率分布的计算后分析技术,可以更好地区分核数据,延迟重新校准的需要。我们通过将高斯混合模型与概率阈值相结合的动态状态选择过程来改变最终输出状态的线性判别来实现这一点。作为对该技术的初步评估,我们检查了它对三到五个量子比特GHZ状态的影响。我们在九台IBM量子计算机中的几乎每一台上的研究结果表明,不可信状态的数量显著减少,结果的概率分布更接近预期。
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Dynamic Output State Classification for Quantum Computers
Quantum computers promise a potentially disruptive approach to improving computation in fields such as physics, chemistry, cryptography, optimisation, and machine learning. However, testing quantum computations for faults is currently impractical because of the existence of noise and errors associated with the output. Executing in a quantum system a circuit with only a few valid output states can generate a significant number of implausible states that have zero probability in an ideal computation. Among other sources of noise, readout errors come from the difficulty of discriminating a measurement between 0 and 1 for the different qubits. These issues are affected by readout drift, requiring regular recalibration of the process. In this paper, we provide a novel technique for post-computation analysis of the output probability distributions that permits better discrimination of kerneled data, delaying the need for recalibration. We achieve this by altering the linear discrimination of the final output states by way of a dynamic state selection process that combines Gaussian mixture models with a probability threshold. As an initial assessment of the technique we examine its effect on three to five qubits GHZ states. Our results on almost every one of nine IBM quantum computers show that the number of implausible states is reduced significantly and that the resulting probability distribution is closer to the expected one.
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