Generative modeling is a promising task for near-term quantum devices, which can use the stochastic nature of quantum measurements as random source. So called Born machines are purely quantum models and promise to generate probability distributions in a quantum way, inaccessible to classical computers. This paper presents an application of Born machines to Monte Carlo simulations and extends their reach to multivariate and conditional distributions. Models are run on (noisy) simulators and IBM Quantum superconducting quantum hardware. More specifically, Born machines are used to generate muonic force carriers (MFC) events resulting from scattering processes between muons and the detector material in high-energy-physics colliders experiments. MFCs are bosons appearing in beyond the standard model theoretical frameworks, which are candidates for dark matter. Empirical evidences suggest that Born machines can reproduce the underlying distribution of datasets coming from Monte Carlo simulations, and are competitive with classical machine learning-based generative models of similar complexity.
翻译:生成模型是近期量子装置的一项有希望的任务,它可以使用量子测量的随机源的随机性质。 因此, Born 机器是纯量量子模型,并有望以量子方式产生概率分布,古代计算机无法使用。 本文介绍了Born 机器对Monte Carlo模拟的应用,并将其范围扩大到多变和有条件分布。 模型运行在( noisy) 模拟器和 IBM 量子超导量子硬件上。 更具体地说, Born 机器被用于产生由诱变过程和高能物理对焦实验中探测器材料的分散过程产生的磁力载体事件。 MFCs 是超出标准模型理论框架之外的恒星,是暗物质的候选物。 Empical 证据表明, Born 机器可以复制来自 Monte Carlo 模拟的数据集的基本分布,并且与基于类似复杂性的经典机器学习的基因化模型具有竞争力。