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RAID
1999
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Computer Networks
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RAID 1999
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Results of the DARPA 1998 Offline Intrusion Detection Evaluation
13 years 9 months ago
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Richard Lippmann, Robert K. Cunningham, David J. F
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Added
04 Aug 2010
Updated
04 Aug 2010
Type
Conference
Year
1999
Where
RAID
Authors
Richard Lippmann, Robert K. Cunningham, David J. Fried, Isaac Graf, Kris R. Kendall, Seth E. Webster, Marc A. Zissman
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Computer Networks Study Group
Computer Vision