论文标题
使用生成对抗网络中数据驱动的HEP背景估计
Data driven background estimation in HEP using Generative Adversarial Networks
论文作者
论文摘要
数据驱动的方法被广泛用于克服蒙特卡洛模拟的缺点(缺乏统计数据,过程不足等)在实验性高能量物理学中。背景过程的精确描述对于达到测量的最佳灵敏度至关重要。但是,用于描述感兴趣区域中背景过程的控制区域的选择偏向某些物理学可观察物的分布,从而使在物理分析中不可能使用这种可观察到的物质。我们没有丢弃这些事件和/或可观察到的东西,而是提出了一种新的方法来生成与感兴趣区域兼容的物理对象,并正确描述与事件属性的其余相关性。我们在此任务中使用生成的对抗网络(GAN),因为gan是各种应用程序的最佳生成器模型之一。我们通过生成$γ+ \ Mathrm {Jets} $的$ \ MathRM {H} \ TOγγ$分析的$γ+ \ Mathrm {Jets} $的新的误识别光子来说明该方法,并证明该GAN生成器能够与该活动的不同属性相关。
Data-driven methods are widely used to overcome shortcomings of Monte Carlo simulations (lack of statistics, mismodeling of processes, etc.) in experimental high energy physics. A precise description of background processes is crucial to reach the optimal sensitivity for a measurement. However, the selection of the control region used to describe the background process in a region of interest biases the distribution of some physics observables, rendering the use of such observables impossible in a physics analysis. Rather than discarding these events and/or observables, we propose a novel method to generate physics objects compatible with the region of interest and properly describing the correlations with the rest of the event properties. We use a generative adversarial network (GAN) for this task, as GANs are among the best generator models for various applications. We illustrate the method by generating a new misidentified photon for the $γ+ \mathrm{jets}$ background of the $\mathrm{H}\toγγ$ analysis at the CERN LHC, and demonstrate that this GAN generator is able to produce a coherent object correlated with the different properties of the rest of the event.