论文标题
与域适应的标准模型横截面的模型独立测量
Model independent measurements of Standard Model cross sections with Domain Adaptation
论文作者
论文摘要
随着ATLA和CMS实验在CERN LHC收集的数据越来越大,Higgs Boson生产横截面的信托和差异测量已成为重要的工具,可以用前所未有的精确度来测试标准模型预测,并寻求可以表现出超出标准模型的物理学的偏差。这些测量通常是为了易于与任何当前或将来的理论预测相媲美,并且要实现此目标,将模型依赖性保持在最低限度很重要。然而,模型依赖性的降低通常是以测量精度为代价的,从而阻止了信号提取程序的全部潜力。在本文中,提出了基于机器学习概念的一种新颖方法,提出了基于机器的适应性概念,该方法允许在信号提取程序中使用复杂的深神经网络,同时确保测量值对信号的理论建模的最小依赖性。
With the ever growing amount of data collected by the ATLAS and CMS experiments at the CERN LHC, fiducial and differential measurements of the Higgs boson production cross section have become important tools to test the standard model predictions with an unprecedented level of precision, as well as seeking deviations that can manifest the presence of physics beyond the standard model. These measurements are in general designed for being easily comparable to any present or future theoretical prediction, and to achieve this goal it is important to keep the model dependence to a minimum. Nevertheless, the reduction of the model dependence usually comes at the expense of the measurement precision, preventing to exploit the full potential of the signal extraction procedure. In this paper a novel methodology based on the machine learning concept of domain adaptation is proposed, which allows using a complex deep neural network in the signal extraction procedure while ensuring a minimal dependence of the measurements on the theoretical modelling of the signal.