Intrusion detection: Its role and validation

作者: G.E. Liepens , H.S. Vaccaro

DOI: 10.1016/0167-4048(92)90175-Q

关键词: Intrusion detection systemFrequentist inferenceProbabilistic logicData miningComputer science

摘要: This paper specifies the proper role of intrusion detection in overall computer security. The probabilistic foundations are developed and practical is characterized as an estimation problem. Two approaches-a frequentist approach Wisdom & Sense^T^M (W&S)-are briefly introduced. ways testing approaches discussed, W&S compared using one these. For limited tests undertaken, shown to perform favorably approach.

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