论文标题
喷气分类的形态
Morphology for Jet Classification
论文作者
论文摘要
我们基于一个神经网络引入了一个喷气机,分析了像素化喷射图像的Minkowski功能(MFS)。 MF是二进制图像的几何测量,可以看作是粒子多样性的概括,这是喷气标记中的重要数量。它们通过扩张而变化编码出现在各个角度尺度上的几何结构。我们明确表明,使用MFS和数学形态的这种分析可以视为受约束的卷积神经网络(CNN)。相反,CNN可以在一定限制中对MFS进行建模,并且我们在标记隐藏谷方案的强相互作用中标记了半可见喷气机的示例中显示了它们的相关性。 MFS独立于喷气物理中常用的IRC安全可观察物。我们将这种形态学分析与IRC安全关系网络结合起来,该网络对两点能量相关进行了建模。尽管所得网络使用受约束的输入参数,但它显示了与CNN的可比的深色射流和顶级喷射标记性能。当可用数据受到限制时,体系结构具有显着的计算优势。我们表明,其标记性能比少数培训样本的CNN要好得多。我们还定性地讨论了他们的Parton-Shower模型依赖性。结果表明,MFS可以是喷气机的IRC-UNSAF特征空间的有效参数化。
We introduce a jet tagger based on a neural network analyzing the Minkowski Functionals (MFs) of pixellated jet images. The MFs are geometric measures of binary images, and they can be regarded as a generalization of the particle multiplicity, which is an important quantity in jet tagging. Their changes by dilation encode the jet constituents' geometric structures that appear at various angular scales. We explicitly show that this analysis using the MFs together with mathematical morphology can be considered a constrained convolutional neural network (CNN). Conversely, CNN could model the MFs in a certain limit, and we show their correlation in the example of tagging semi-visible jets emerging from the strong interaction of a hidden valley scenario. The MFs are independent of the IRC-safe observables commonly used in jet physics. We combine this morphological analysis with an IRC-safe relation network which models two-point energy correlations. While the resulting network uses constrained input parameters, it shows comparable dark jet and top jet tagging performances to the CNN. The architecture has significant computational advantages when the available data is limited. We show that its tagging performance is much better than that of the CNN with a small number of training samples. We also qualitatively discuss their parton-shower model dependency. The results suggest that the MFs can be an efficient parameterization of the IRC-unsafe feature space of jets.