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Unsupervised statistical learning applied to experimental high-energy physics and related areas

机译:无监督统计学习应用于实验高能物理及相关领域

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摘要

Unsupervised statistical learning (USL) techniques, such as self-organizing maps (SOMs), principal component analysis (PCA) and independent component analysis explore different statistical properties to efficiently process information from multiple variables. USL algorithms have been successfully applied in experimental high-energy physics (HEP) and related areas for different purposes, such as feature extraction, signal detection, noise reduction, signal-background separation and removal of cross-interference from multiple signal sources in multisensor measurement systems. This paper presents both a review of the theoretical aspects of these signal processing methods and examples of some successful applications in HEP and related areas experiments.
机译:无监督统计学习(USL)技术,例如自组织图(SOM),主成分分析(PCA)和独立成分分析,探索了不同的统计属性,以有效地处理来自多个变量的信息。 USL算法已成功用于不同目的的实验高能物理(HEP)及其相关领域,例如特征提取,信号检测,降噪,信号背景分离以及消除多传感器测量中来自多个信号源的交叉干扰系统。本文既介绍了这些信号处理方法的理论方面,又提供了一些在HEP和相关领域实验中成功应用的实例。

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