无监督学习与在线异常检测

IF 0.5 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
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引用次数: 1

摘要

大型强子对撞机(LHC)需要大量的计算资源来处理从高能物理(HEP)实验和用户日志中产生的pb级数据,这些数据报告了支持全球LHC计算网格(WLCG)的用户活动。由于即将进行的大型强子对撞机升级,预计将产生大量的数据和信息,即在不久的将来,WLCG的工作量将增加10倍。基于日志挖掘和机器学习算法的自主系统维护对于保持计算网格的功能至关重要。其目的是检测软件故障、缺陷、威胁和基础设施问题。本文描述了使用非结构化、文本和无监督数据的计算机网格异常检测的通用解决方案。该解决方案包括基于从用户日志事件中提取的内容和信息来识别异常活动的周期。本研究特别比较了一类支持向量机、隔离森林(IF)和局部离群因子(LOF)。中频提供了最好的故障检测精度,69.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Learning and Online Anomaly Detection
The Large Hadron Collider (LHC) demands a huge amount of computing resources to deal with petabytes of data generated from High Energy Physics (HEP) experiments and user logs, which report user activity within the supporting Worldwide LHC Computing Grid (WLCG). An outburst of data and information is expected due to the scheduled LHC upgrade, viz., the workload of the WLCG should increase by 10 times in the near future. Autonomous system maintenance by means of log mining and machine learning algorithms is of utmost importance to keep the computing grid functional. The aim is to detect software faults, bugs, threats, and infrastructural problems. This paper describes a general-purpose solution to anomaly detection in computer grids using unstructured, textual, and unsupervised data. The solution consists in recognizing periods of anomalous activity based on content and information extracted from user log events. This study has particularly compared One-class SVM, Isolation Forest (IF), and Local Outlier Factor (LOF). IF provides the best fault detection accuracy, 69.5%.
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来源期刊
CiteScore
1.70
自引率
14.30%
发文量
17
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