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Unsupervised Labeling for Supervised Anomaly Detection in Enterprise and Cloud Networks

机译:企业和云网络中监督异常检测的无监督标记

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Identifying anomalous events in the network is one of the vital functions in enterprises, ISPs, and datacenters to protect the internal resources. With its importance, there has been a substantial body of work for network anomaly detection using supervised and unsupervised machine learning techniques with their own strengths and weaknesses. In this work, we take advantage of the both worlds of unsupervised and supervised learning methods. The basic process model we present in this paper includes (i) clustering the training data set to create referential labels, (ii) building a supervised learning model with the automatically produced labels, and (iii) testing individual data points in question using the established learning model. By doing so, it is possible to construct a supervised learning model without the provision of the associated labels, which are often not available in practice. To attain this process, we set up a new property defining anomalies in the context of clustering, based on our observations from anomalous events in network, by which the referential labels can be obtained. Through our extensive experiments with a public data set (NSL-KDD), we will show that the presented method perform very well, yielding fairly comparable performance to the traditional method running with the original labels provided in the data set, with respect to the accuracy for anomaly detection.
机译:识别网络中的异常事件是企业,ISP和数据中心的重要功能,以保护内部资源。以其重要性为重要的,使用具有自己的优势和劣势的监督和无监督机器学习技术,有一个大量的网络异常检测。在这项工作中,我们利用了无监督和监督的学习方法的两个世界。我们本文存在的基本过程模型包括(i)培养培训数据集以创建引用标签,(ii)与自动生产的标签构建监督学习模型,(iii)使用已建立的问题测试各个数据点学习模式。通过这样做,可以在不提供相关标签的情况下构建监督学习模型,这通常在实践中不可用。为了获得此过程,我们根据我们从网络中的异常事件的观察,在聚类的上下文中设置了一个新的属性定义异常,通过网络中的异常事件,可以获得参考标签。通过我们的广泛实验与公共数据集(NSL-KDD),我们将表明,所提出的方法表现得非常好,对使用数据集中提供的原始标签运行的传统方法具有相当相当的性能,相对于准确性用于异常检测。

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