Intrusion Detection Systems are an important component of many organizations' cyber defense and resiliency strategies. However, one downside of these systems is their reliance on known attack signatures for detection of malicious network events. When it comes to unknown attack types and zero-day exploits, modern Intrusion Detection Systems often fall short. In this paper, we introduce an unconventional approach to identifying network traffic features that influence novelty detection based on survival analysis techniques. Specifically, we combine several Cox proportional hazards models and implement Kaplan-Meier estimates to predict the probability that a classifier identifies novelty after the injection of an unknown network attack at any given time. The proposed model is successful at pinpointing PSH Flag Count, ACK Flag Count, URG Flag Count, and Down/Up Ratio as the main features to impact novelty detection via Random Forest, Bayesian Ridge, and Linear Support Vector Regression classifiers.
翻译:入侵探测系统是许多组织网络防御和复原力战略的重要组成部分。 但是,这些系统的下行方面是依靠已知的攻击信号来探测恶意网络事件。 在未知攻击类型和零天利用方面,现代入侵探测系统往往不尽人意。 在本文中,我们引入了一种非传统的方法来识别影响基于生存分析技术的新发现网络交通特征。 具体地说,我们结合了几种考克斯比例危害模型,并实施了卡普兰- 梅耶估计,以预测在任何特定时间注入未知网络袭击后,分类者发现新奇的可能性。 拟议的模型成功地确定了PSH旗号、ACK旗号、URG旗号计数和下/上位率,作为影响随机森林、Bayesian Ridge和线形支持矢量递增分类器的新发现的主要特征。