CRJun 2, 2020

Towards Identifying Human Actions, Intent, and Severity of APT Attacks Applying Deception Techniques -- An Experiment

arXiv:2006.01849v1
Originality Incremental advance
AI Analysis

This work addresses the challenge of APT detection for cybersecurity, offering an incremental improvement over traditional intrusion detection methods by leveraging deception techniques.

The study tackled the problem of detecting Advanced Persistent Threat (APT) attacks by using honey items (decoy objects) to differentiate between automated and manual structured intrusions, showing that interactions with these items can successfully classify manual attacks and indicate severity.

Attacks by Advanced Persistent Threats (APTs) have been shown to be difficult to detect using traditional signature- and anomaly-based intrusion detection approaches. Deception techniques such as decoy objects, often called honey items, may be deployed for intrusion detection and attack analysis, providing an alternative to detect APT behaviours. This work explores the use of honey items to classify intrusion interactions, differentiating automated attacks from those which need some human reasoning and interaction towards APT detection. Multiple decoy items are deployed on honeypots in a virtual honey network, some as breadcrumbs to detect indications of a structured manual attack. Monitoring functionality was created around Elastic Stack with a Kibana dashboard created to display interactions with various honey items. APT type manual intrusions are simulated by an experienced pentesting practitioner carrying out simulated attacks. Interactions with honey items are evaluated in order to determine their suitability for discriminating between automated tools and direct human intervention. The results show that it is possible to differentiate automatic attacks from manual structured attacks; from the nature of the interactions with the honey items. The use of honey items found in the honeypot, such as in later parts of a structured attack, have been shown to be successful in classification of manual attacks, as well as towards providing an indication of severity of the attacks

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