End-to-End Analyses Using Image Classification

Adam Aurisano, L. Whitehead
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Abstract

End-to-end analyses of data from high-energy physics experiments using machine and deep learning techniques have emerged in recent years. These analyses use deep learning algorithms to go directly from low-level detector information directly to high-level quantities that classify the interactions. The most popular class of algorithms for these analyses are convolutional neural networks that operate on experimental data formatted as images. End-to-end analyses skip stages of the traditional workflow that includes the reconstruction of particles produced in the interactions, and as such are not limited by efficiency losses and sources of inaccuracy throughout the event reconstruction process. In many cases, deep learning end-to-end analyses have been shown to have significantly increased performance compared to previous state-of-the-art methods.
端到端分析使用图像分类
近年来,利用机器和深度学习技术对高能物理实验数据进行端到端分析已经出现。这些分析使用深度学习算法直接从低级检测器信息直接到高级数量,对相互作用进行分类。这些分析中最流行的一类算法是卷积神经网络,它将实验数据格式化为图像。端到端分析跳过了传统工作流程的各个阶段,包括在相互作用中产生的粒子的重建,因此不受整个事件重建过程中效率损失和不准确来源的限制。在许多情况下,与以前最先进的方法相比,深度学习端到端分析已经显示出显著提高的性能。
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