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System Monitoring with Metric-Correlation Models

机译:度量相关模型的系统监视

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摘要

Modern software systems expose management metrics to help track their health. Recently, it was demonstrated that correlations among these metrics allow errors to be detected and their causes localized. Prior research shows that linear models can capture many of these correlations. However, our research shows that several factors may prevent linear models from accurately describing correlations, even if the underlying relationship is linear. Common phenomena we have observed include relationships that evolve, relationships with missing variables, and heterogeneous residual variance of the correlated metrics. Usually these phenomena can be discovered by testing for heteroscedasticity of the underlying linear models. Such behaviour violates the assumptions of simple linear regression, which thus fail to describe system dynamics correctly. In this paper we address the above challenges by employing efficient variants of Ordinary Least Squares regression models. In addition, we automate the process of error detection by introducing the Wilcoxon Rank-Sum test after proper correlations modeling. We validate our models using a realistic Java-Enterprise-Edition application. Using fault-injection experiments we show that our improved models capture system behavior accurately.
机译:现代软件系统公开管理指标以帮助跟踪其运行状况。最近,证明了这些度量之间的相关性使得可以检测到错误并将其原因定位。先前的研究表明,线性模型可以捕获许多这些相关性。但是,我们的研究表明,即使基本关系是线性的,也有几个因素可能会阻止线性模型准确描述相关性。我们观察到的常见现象包括演变的关系,与缺失变量的关系以及相关度量的异构残差。通常,可以通过测试基础线性模型的异方差性来发现这些现象。这种行为违反了简单线性回归的假设,因此无法正确描述系统动力学。在本文中,我们通过使用普通最小二乘回归模型的有效变体来应对上述挑战。此外,在适当的相关性建模之后,我们通过引入Wilcoxon秩和检验来自动执行错误检测过程。我们使用实际的Java-Enterprise-Edition应用程序验证模型。使用故障注入实验,我们表明改进的模型可以准确地捕获系统行为。

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