Publication | Open Access
ANUBIS
30
Citations
20
References
2022
Year
Artificial IntelligenceAnubis DesignPresent AnubisRecent Apt DatasetMachine LearningData ScienceData MiningEngineeringThreat DetectionPredictive AnalyticsMachine Learning ToolAdversarial Machine LearningKnowledge DiscoveryThreat HuntingCyber Threat IntelligenceComputer ScienceSoftware Analysis
We present ANUBIS, a highly effective machine learning-based APT detection system. Our design philosophy for ANUBIS involves two principal components. Firstly, we intend ANUBIS to be effectively utilized by cyber-response teams. Therefore, prediction explainability is one of the main focuses of ANUBIS design. Secondly, ANUBIS uses system provenance graphs to capture causality and thereby achieves high detection performance. At the core of the predictive capability of ANUBIS, there is a Bayesian Neural Network that can tell how confident it is in its predictions. We evaluate ANUBIS against a recent APT dataset (DARPA OpTC) and show that ANUBIS can detect malicious activity akin to APT campaigns with high accuracy. Moreover, ANUBIS learns about high-level patterns that allow it to explain its predictions to threat analysts. The high predictive performance with explainable attack story reconstruction makes ANUBIS an effective tool to use for enterprise cyber defense.
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