Improving intrusion detection through merging heterogeneous IP data

作者: Wenjie Zhu , Qiang Wang

DOI: 10.1109/ICINFA.2012.6246794

关键词:

摘要: Intrusion Detection is an important and classical research area in network security. It observed that existing intrusion detection methods usually all data the as a whole. However, reality, can be categorized into two types: upward IP downward data. These types of may play different roles process. Based on this observation, novel method called Duplex Traffic Joint Analyzing(DTJA) proposed so to consider both more specifically. With method, clues found effectively efficiently. Experiment results indicate feasible.

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