Litcius/Paper detail

Insider Intrusion Detection Techniques: A State-of-the-Art Review

T N Nisha, Dhanya Pramod

2023Journal of Computer Information Systems13 citationsDOI

Abstract

This study is a systematic literature review on anomaly-based intrusion detection methods specially to detect insider attacks. The focus is to enumerate the techniques for modeling host-based and network-based anomaly detection. By leveraging the sequential characteristics of network data, we further discuss the concept of event-based intrusion detection. The research starts with a bibliometric analysis of the broader topic. The PRISMA methodology is implemented to analyze papers selected after the primary search. This study revolves around four research questions formed to serve the purpose defined. The study unveils the opportunity of event-based models in insider intrusion detection and identifies the possibility of a combined model to detect insiders as early as possible. The study recommends incorporating the strengths of anomaly-based, signature-based and knowledge-based models to detect the attacks proactively.

Topics & Concepts

Insider threatIntrusion detection systemInsiderComputer scienceAnomaly detectionEvent (particle physics)IntrusionSignature (topology)Data miningData scienceState (computer science)Anomaly (physics)Host (biology)Anomaly-based intrusion detection systemFocus (optics)Network securityComputer securityAlgorithmPolitical sciencePhysicsCondensed matter physicsEcologyOpticsGeometryMathematicsQuantum mechanicsGeologyLawBiologyGeochemistryNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingAdvanced Malware Detection Techniques