论文标题
喷气流:生成带有条件和质量限制正常流量的喷气机
JetFlow: Generating Jets with Conditioned and Mass Constrained Normalising Flows
论文作者
论文摘要
基于机器学习的快速数据生成已成为粒子物理学的主要研究主题。这主要是因为蒙特卡洛模拟方法对于未来的山着人来说是在计算上具有挑战性的,这将具有明显更高的发光度。对撞机数据的产生类似于点云的产生,两点之间具有复杂的相关性。 在这项研究中,研究了使用理性二次样条耦合层具有高度将流量进行标准化的喷气机的产生。如果没有对喷气质量进行调节,我们的归一化流就无法正确建模数据中的所有相关性,这在比较地面真相与生成数据之间的不变喷气质量分布时很明显。使用不变质量作为耦合转换的条件,可以增强所有跟踪指标的性能。此外,我们演示了如何通过插值经验累积分布函数来采样原始的质量分布。同样,通过引入射流中成分数量的其他条件来照顾成分数量。 此外,我们研究了在损失项中包括额外质量约束的有用性。在\ texttt {jetnet}数据集上,我们的模型显示了最先进的性能与快速和稳定的培训相结合。
Fast data generation based on Machine Learning has become a major research topic in particle physics. This is mainly because the Monte Carlo simulation approach is computationally challenging for future colliders, which will have a significantly higher luminosity. The generation of collider data is similar to point cloud generation with complex correlations between the points. In this study, the generation of jets with up to 30 constituents with Normalising Flows using Rational Quadratic Spline coupling layers is investigated. Without conditioning on the jet mass, our Normalising Flows are unable to model all correlations in data correctly, which is evident when comparing the invariant jet mass distributions between ground truth and generated data. Using the invariant mass as a condition for the coupling transformation enhances the performance on all tracked metrics. In addition, we demonstrate how to sample the original mass distribution by interpolating the empirical cumulative distribution function. Similarly, the variable number of constituents is taken care of by introducing an additional condition on the number of constituents in the jet. Furthermore, we study the usefulness of including an additional mass constraint in the loss term. On the \texttt{JetNet} dataset, our model shows state-of-the-art performance combined with fast and stable training.