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Anomaly-based threat detection: Behavioural fingerprinting versus self-learning AI

Author

Listed:
  • Cornelius, Jeff

    (Darktrace, USA)

  • Fellows, Simon

    (Darktrace, UK)

  • Cox, Oakley

    (Darktrace, New Zealand)

  • Lister, Sam

    (Darktrace, UK)

Abstract

When a malicious actor has access to a digital estate, they control compromised devices and user accounts to achieve their objectives. Given that an attacker’s objectives are often at odds with devices’ normal patterns of life, identifying deviations from these patterns can be used to detect an ongoing attack. This paper outlines and compares two approaches to anomaly-based threat detection: behavioural fingerprinting and self-learning artificial intelligence (AI). It argues that the self-learning approach is significantly superior in several important ways due to the fact it provides a more complex and accurate understanding of what is normal. The paper explains the motivation behind anomaly-based threat hunting, describes the fingerprinting approach and the self-learning approach to anomaly detection, and details real-world examples that demonstrate the advantages of the self-learning approach.

Suggested Citation

  • Cornelius, Jeff & Fellows, Simon & Cox, Oakley & Lister, Sam, 2022. "Anomaly-based threat detection: Behavioural fingerprinting versus self-learning AI," Cyber Security: A Peer-Reviewed Journal, Henry Stewart Publications, vol. 6(1), pages 14-25, September.
  • Handle: RePEc:aza:csj000:y:2022:v:6:i:1:p:14-25
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    More about this item

    Keywords

    artificial intelligence; machine learning; anomaly detection; self-learning; behavioural fingerprinting;
    All these keywords.

    JEL classification:

    • M15 - Business Administration and Business Economics; Marketing; Accounting; Personnel Economics - - Business Administration - - - IT Management

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