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CMIRGen: Automatic Signature Generation Algorithm for Malicious Network Traffic

机译:CMIRGEN:用于恶意网络流量的自动签名生成算法

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摘要

Although machine learning (ML) based solutions are ever-evolving for the attack defending paradigm, signatures of malicious network traffic are vital resources for intrusion detection systems (IDSs) and network forensic procedure, covering the lack of interpretability and stability for ML models. However, signature extraction is still a time and labor consuming task nowadays, resulting in possible increase of the attackers' dwell time. Existing automatic solutions rely too much on sequence similarity based and heuristic based methods, encountering performance degradation in large scale and dynamic network environment. In this paper, we present a novel method, called Clustering and Model Inference-based Rule Generation (CMIRGen), automatically generating token-set based signature rules for malicious traffic payloads to be inspected. CMIRGen leverages both optimized sequence similarity based and black-box model inference based methods to extract patterns from homogeneous and heterogeneous payloads respectively. Experimental evaluations have been conducted on several datasets and show the CMIRGen framework can extract discriminative signatures, presenting high recall rate and low false positive rate at the same time for malicious content recognition.
机译:虽然基于机器学习(ML)的解决方案对于攻击防守范式进行了不断发展,但恶意网络流量的签名是入侵检测系统(IDS)和网络法医程序的重要资源,涵盖ML模型的缺乏可解释性和稳定性。然而,签名提取仍然是现在的时间和劳动力消耗任务,导致攻击者的停留时间可能增加。现有的自动解决方案对序列相似性的基于序列相似性和启发式的方法,遇到大规模和动态网络环境中的性能下降。在本文中,我们提出了一种新的方法,称为群集和基于模型推断的规则生成(CMIrgen),自​​动生成基于令牌集的签名规则,以便检查恶意业务有效载荷。 CMIrgen利用基于均匀的基于序列相似性的基于和黑盒式推断的方法,以分别提取来自均匀和异构有效载荷的模式。已经在几个数据集上进行了实验评估,并显示CMIrgen框架可以提取歧视性签名,同时呈现高召回率和低误率,以进行恶意内容识别。

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