Publication | Closed Access
Detecting intrusions using system calls: alternative data models
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Citations
13
References
2003
Year
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Anomaly DetectionEngineeringEvasion TechniqueInformation SecurityVerificationInformation ForensicsSoftware AnalysisFormal VerificationIntrusion Detection SystemsHardware SecurityData ScienceData MiningNormal BehaviorIntrusion Detection SystemThreat DetectionIntrusion ToleranceKnowledge DiscoveryComputer ScienceAlternative Data ModelsData SecurityObservable DataProgram AnalysisIntrusion DetectionBotnet Detection
Intrusion detection systems rely on a wide variety of observable data to distinguish between legitimate and illegitimate activities. We study one such observable-sequences of system calls into the kernel of an operating system. Using system-call data sets generated by several different programs, we compare the ability of different data modeling methods to represent normal behavior accurately and to recognize intrusions. We compare the following methods: simple enumeration of observed sequences; comparison of relative frequencies of different sequences; a rule induction technique; and hidden Markov models (HMMs). We discuss the factors affecting the performance of each method and conclude that for this particular problem, weaker methods than HMMs are likely sufficient.
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