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An Anomaly Detection Method for Individual Service on Web-based System by Selection of Dummy Variables in Multiple Regression

机译:多元回归中的虚拟变量选择基于Web的系统的单个服务的异常检测方法

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This paper addresses detecting anomalies of individual services from their total resource usage on web-based system. Because the total resource usage is a linear combination of the number of accesses to each service, multiple regression analysis can be applied to estimate a resource usage per an access to each service as regression coefficient. However, the regression coefficients differ from the resource usage per an access of the services, which is caused by unstable resource usage per an access. We propose a method based on a multiple correlation coefficient to identify anomaly time and anomaly services. The proposed method identifies anomaly time when the correlation coefficient is decreased. And the proposed method identifies the anomaly service by judging whether the correlation coefficient is increased or not after the selection of the dummy variable. The experimental result shows that the proposed method can identify all the anomaly time, and improves precision rate and recall rate of detecting anomaly services by 20% at least, respectively.
机译:本文从基于Web的系统上的总资源使用情况检测单个服务的异常。因为总资源使用是每个服务的访问数量的线性组合,所以可以应用多元回归分析来估计对每个服务的访问的资源使用作为回归系数。然而,回归系数与服务的访问的资源使用率不同,这是由访问的不稳定资源使用引起的。我们提出了一种基于多相关系数的方法来识别异常时间和异常服务。所提出的方法识别相关系数减少的异常时间。并且所提出的方法通过判断相关系数是否增加而不是在选择虚拟变量之后来识别异常服务。实验结果表明,该方法可以分别识别所有异常时间,并至少分别提高20%的检测异常服务的精度和召回速率。

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