NLP Methods in Host-based Intrusion Detection Systems: A Systematic Review and Future Directions
Zarrin Tasnim Sworna, Zahra Mousavi, and Muhammad Ali Babar

TL;DR
This paper systematically reviews the use of NLP techniques in host-based intrusion detection systems, highlighting current practices, challenges, and future research directions to improve detection of complex cyber attacks.
Contribution
It provides a comprehensive taxonomy and comparison of NLP methods in HIDS, identifying gaps and proposing future research avenues.
Findings
NLP enhances detection of zero-day attacks and attack prediction.
Current NLP-based HIDS face challenges like high false positive rates.
The review highlights prevalent NLP techniques, datasets, and evaluation metrics.
Abstract
Host based Intrusion Detection System (HIDS) is an effective last line of defense for defending against cyber security attacks after perimeter defenses (e.g., Network based Intrusion Detection System and Firewall) have failed or been bypassed. HIDS is widely adopted in the industry as HIDS is ranked among the top two most used security tools by Security Operation Centers (SOC) of organizations. Although effective and efficient HIDS is highly desirable for industrial organizations, the evolution of increasingly complex attack patterns causes several challenges resulting in performance degradation of HIDS (e.g., high false alert rate creating alert fatigue for SOC staff). Since Natural Language Processing (NLP) methods are better suited for identifying complex attack patterns, an increasing number of HIDS are leveraging the advances in NLP that have shown effective and efficient…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Information and Cyber Security · Advanced Malware Detection Techniques
