Litcius/Paper detail

Exploring anomalous behaviour detection and classification for insider threat identification

Duc C. Le, A. Nur Zincir‐Heywood

2020International Journal of Network Management55 citationsDOI

Abstract

Summary Recently, malicious insider threats represent one of the most damaging threats to companies and government agencies. Insider threat detection is a highly skewed data analysis problem, where the huge class imbalance makes the adaptation of learning algorithms to the real‐world context very difficult. This study proposes a new system for user‐centred machine learning‐based anomaly behaviour and insider threat detection on multiple data granularity levels. System evaluations and analysis are performed not only on individual data instances but also on normal and malicious users. Our results show that the proposed system, which is a combination of unsupervised anomaly detection and supervised machine learning methods, can learn from unlabelled data and a very small amount of labelled data. Furthermore, it can generalize to bigger datasets for detecting anomalous behaviours and unseen malicious insiders with a high detection and a low false‐positive rate.

Topics & Concepts

Insider threatComputer scienceAnomaly detectionIdentification (biology)InsiderContext (archaeology)Machine learningArtificial intelligenceAdaptation (eye)GranularityComputer securityData miningPhysicsBotanyBiologyPolitical scienceOpticsOperating systemPaleontologyLawNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsInformation and Cyber Security