论文标题

基于主机的入侵检测系统中的NLP方法:系统审查和未来方向

NLP Methods in Host-based Intrusion Detection Systems: A Systematic Review and Future Directions

论文作者

Sworna, Zarrin Tasnim, Mousavi, Zahra, Babar, Muhammad Ali

论文摘要

基于主机的入侵检测系统(HIDS)是在外围防御后(例如,基于网络的入侵检测系统和防火墙)防御网络安全攻击的有效防御措施,已经失败或绕过。由于HID被组织的安全操作中心(SOC)排名最多的两个安全工具,因此HID在行业中被广泛采用。尽管对于工业组织来说,有效而有效的HID是非常需要的,但日益复杂的攻击模式的演变导致了几个挑战,导致HID的性能下降(例如,高的虚假警报速率为SOC员工造成警报疲劳)。由于自然语言处理(NLP)方法更适合识别复杂的攻击模式,因此,越来越多的HID正在利用NLP的进步,这些进步在精确检测低足迹,零日间攻击并预测攻击者的下一步方面表现出有效和有效的性能。在HID中使用NLP的这种积极研究趋势需要综合且全面的基于NLP的HID知识。因此,我们对使用NLP在HIDS开发中使用的端到头的文献进行了系统的综述。对于基于NLP的端到端HIDS开发管道,我们在分类中识别并系统地比较了在HIDS中使用NLP方法的艺术状态,这些NLP方法,数据集和评估指标被检测到的攻击,这些攻击用于评估NLP基于NLP的HIDS。我们强调了支持HID开发人员的相关经验,考虑,考虑因素,优势和局限性。我们还概述了基于NLP的未来研究方向HIDS开发。

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 performance in precisely detecting low footprint, zero day attacks and predicting the next steps of attackers. This active research trend of using NLP in HIDS demands a synthesized and comprehensive body of knowledge of NLP based HIDS. Thus, we conducted a systematic review of the literature on the end to end pipeline of the use of NLP in HIDS development. For the end to end NLP based HIDS development pipeline, we identify, taxonomically categorize and systematically compare the state of the art of NLP methods usage in HIDS, attacks detected by these NLP methods, datasets and evaluation metrics which are used to evaluate the NLP based HIDS. We highlight the relevant prevalent practices, considerations, advantages and limitations to support the HIDS developers. We also outline the future research directions for the NLP based HIDS development.

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