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Clustering and monitoring edge behaviour in enterprise network traffic

机译:群集和监视企业网络流量中的边缘行为

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This paper takes an unsupervised learning approach for monitoring edge activity within an enterprise computer network. Using NetFlow records, features are gathered across the active connections (edges) in 15-minute time windows. Then, edges are grouped into clusters using the k-means algorithm. This process is repeated over contiguous windows. A series of informative indicators are derived by examining the relationship of edges with the observed cluster structure. This leads to an intuitive method for monitoring network behaviour and a temporal description of edge behaviour at global and local levels.
机译:本文采用一种无监督的学习方法来监视企业计算机网络中的边缘活动。使用NetFlow记录,可以在15分钟的时间窗口内跨活动连接(边缘)收集功能。然后,使用k-means算法将边缘分组为聚类。在连续的窗口上重复此过程。通过检查边缘与观察到的簇结构之间的关系,可以得出一系列的信息指标。这导致监视网络行为的直观方法以及全局和局部级别的边缘行为的时间描述。

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