Information security – Monitoring or scanning of software or data including attack... – Intrusion detection
Reexamination Certificate
2005-09-13
2010-10-12
Moazzami, Nasser (Department: 2436)
Information security
Monitoring or scanning of software or data including attack...
Intrusion detection
C726S023000
Reexamination Certificate
active
07814548
ABSTRACT:
Intruders into a computer are detected by capturing historical data input into the computer by a user during a training mode, by profiling the historical data during the training mode to identify normal behavior, by capturing test data input by the user into the computer during an operational mode, by comparing the test data with the profiled historical data in accordance with a predetermined similarity metric during the operational mode to produce similarity results, and by evaluating the similarity results during the operational mode to identify abnormal data.
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Banerjee Satyajit
Mukhopadhyay Debapriyay
Honeywell International , Inc.
Kaasch Tuesday A.
Lewis Lisa
Lopez Kermit D.
Moazzami Nasser
LandOfFree
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