Publication | Closed Access
Information-theoretic measures for anomaly detection
539
Citations
20
References
2002
Year
Unknown Venue
Anomaly DetectionEngineeringInformation SecurityRelative Conditional EntropyInformation ForensicsHardware SecurityData ScienceData MiningStatisticsConditional EntropyIntrusion Detection SystemOutlier DetectionKnowledge DiscoveryProbability TheoryComputer ScienceSecurity AuditData SecurityCryptographyLog AnalysisEntropyNovelty DetectionSecurity Measurement
Anomaly detection is an essential component of protection mechanisms against novel attacks. We propose to use several information-theoretic measures, namely, entropy, conditional entropy, relative conditional entropy, information gain, and information cost for anomaly detection. These measures can be used to describe the characteristics of an audit data set, suggest the appropriate anomaly detection model(s) to be built, and explain the performance of the model(s). We use case studies on Unix system call data, BSM data, and network tcpdump data to illustrate the utilities of these measures.
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