深度学习如何与 ATLAS 的深度思考相辅相成

Deepak Kar
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引用次数: 0

摘要

ATLAS 合作组织在其物理计划中以多种不同方式使用机器学习(ML)算法,包括天体重构、模拟量热计阵雨、搜索和测量中的信号与背景判别、根据喷流的起源对其进行标记等。异常检测(AD)技术也越来越受欢迎,它们被用来发现数据中隐藏的模式,而不像基于监督学习的方法那样依赖模拟样本。将讨论探测器模拟和 ATLAS 喷射标记中使用的 ML 方法,以及使用 ML/AD 技术进行的四次搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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How deep learning is complementing deep thinking in ATLAS

ATLAS collaboration uses machine learning (ML) algorithms in many different ways in its physics programme, starting from object reconstruction, simulation of calorimeter showers, signal to background discrimination in searches and measurements, tagging jets based on their origin and so on. Anomaly detection (AD) techniques are also gaining popularity where they are used to find hidden patterns in the data, with lesser dependence on simulated samples as in the case of supervised learning-based methods. ML methods used in detector simulation and in jet tagging in ATLAS will be discussed, along with four searches using ML/AD techniques.

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