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Root Cause Analysis of Network Failures Using Machine Learning and Summarization Techniques

机译:使用机器学习和汇总技术的网络故障的根本原因分析

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Root cause analysis includes the methods to identify the sources of errors in a network. Most techniques rely on knowledge models of the system, which are usually built by using network operators' expertise. This presents problems related to knowledge extraction, scalability, and understandability. We propose an offline method based on machine learning techniques for the automatic identification of dependencies between system events, enhanced with summarization, operations on graphs, and visualization that help network operators identify the root causes of errors. We illustrate it with examples from a corporate network.
机译:根本原因分析包括识别网络中错误源的方法。大多数技术依赖于系统的知识模型,这些知识模型通常是利用网络运营商的专业知识来构建的。这提出了与知识提取,可伸缩性和可理解性有关的问题。我们提出了一种基于机器学习技术的离线方法,用于自动识别系统事件之间的依赖关系,并通过摘要,图形操作和可视化功能得到增强,以帮助网络运营商识别错误的根本原因。我们通过公司网络中的示例进行说明。

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