Publication | Closed Access
Detecting insider threats in a real corporate database of computer usage activity
133
Citations
16
References
2013
Year
Unknown Venue
Anomaly DetectionEngineeringBusiness IntelligenceInformation SecurityMalicious Insider BehaviorInformation ForensicsBusiness AnalyticsInsider ThreatsData ScienceData MiningManagementReal Corporate DatabaseThreat (Computer)Intrusion Detection SystemThreat DetectionKnowledge DiscoveryComputer ScienceInsider ThreatSecurity VisualizationComputer Usage ActivityThreat HuntingBig Data
This paper reports on methods and results of an applied research project by a team consisting of SAIC and four universities to develop, integrate, and evaluate new approaches to detect the weak signals characteristic of insider threats on organizations' information systems. Our system combines structural and semantic information from a real corporate database of monitored activity on their users' computers to detect independently developed red team inserts of malicious insider activities. We have developed and applied multiple algorithms for anomaly detection based on suspected scenarios of malicious insider behavior, indicators of unusual activities, high-dimensional statistical patterns, temporal sequences, and normal graph evolution. Algorithms and representations for dynamic graph processing provide the ability to scale as needed for enterprise-level deployments on real-time data streams. We have also developed a visual language for specifying combinations of features, baselines, peer groups, time periods, and algorithms to detect anomalies suggestive of instances of insider threat behavior. We defined over 100 data features in seven categories based on approximately 5.5 million actions per day from approximately 5,500 users. We have achieved area under the ROC curve values of up to 0.979 and lift values of 65 on the top 50 user-days identified on two months of real data.
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