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AI/ML for Network Security

Arthur Selle Jacobs, Roman Beltiukov, Walter Willinger, Ronaldo A. Ferreira, Arpit Gupta, Lisandro Zambenedetti Granville

2022Proceedings of the 2022 ACM SIGSAC Conference on Computer and Communications Security79 citationsDOI

Abstract

Several recent research efforts have proposed Machine Learning (ML)-based solutions that can detect complex patterns in network traffic for a wide range of network security problems. However, without understanding how these black-box models are making their decisions, network operators are reluctant to trust and deploy them in their production settings. One key reason for this reluctance is that these models are prone to the problem of underspecification, defined here as the failure to specify a model in adequate detail. Not unique to the network security domain, this problem manifests itself in ML models that exhibit unexpectedly poor behavior when deployed in real-world settings and has prompted growing interest in developing interpretable ML solutions (e.g., decision trees) for "explaining'' to humans how a given black-box model makes its decisions. However, synthesizing such explainable models that capture a given black-box model's decisions with high fidelity while also being practical (i.e., small enough in size for humans to comprehend) is challenging.

Topics & Concepts

Black boxComputer scienceKey (lock)FidelityNetwork securityUnderspecificationDomain (mathematical analysis)Artificial intelligenceRange (aeronautics)Threat modelComputer securityMachine learningMathematicsTelecommunicationsComposite materialMaterials scienceMathematical analysisNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsAdversarial Robustness in Machine Learning
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