Adaptive Anomaly Detection on Network Data Streams

2018 IEEE International Conference on Intelligence and Security Informatics (ISI)(2018)

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摘要
As the number of cyber-attacks increases, there has been increasing emphasis on developing complementary methods of detection to the existing signature-based approaches. This work builds upon a previously discovered persistent structure within the Los Alamos National Laboratory network data sources, to develop a regression based streaming anomaly detection mechanism that can adapt to the network behaviour over time. The methodology has also been applied to a new data set of the same network to assess the extent of its pertinence in time.
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关键词
Netflow Data,Authentication events,Forgetting factor,Anomaly detection
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