Anomaly Detection in Encrypted Identity Resolution Traffic based on Machine Learning

Zhishen Zhu, Hao Zhou, Qingya Yang, Chonghua Wang, Zhuguo Li
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Abstract

Identity resolution is an emerging network resource widely applied in Industrial Internet of Things. Although encryption improves the privacy of identity resolution, it also challenges DPI-based anomaly detection. Therefore, it is imperative to recognize and supplement the encrypted information of IDS. In this paper, we design a machine learning-based framework to automatically extract critical information of identity resolution system from network traffic. According to the characteristics of traffic, we use the hybrid feature of statistics and sequences to describe encrypted traffic. Besides, a supervised classification algorithm is applied to explore the effective classification of two communication processes, which are service attribution information for node addressing and operation behavior for data management. We tested this method based on the encrypted traffic collected from a realistic identity resolution system. The results indicate that our approach exhibits good performance, outperforms related works, and can be applied in resource-constrained industrial scenario. This is the first work analysing the identity resolution system from the perspective of traffic analysis.
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基于机器学习的加密身份解析流量异常检测
身份解析是工业物联网中广泛应用的新兴网络资源。虽然加密提高了身份解析的隐私性,但它也对基于dpi的异常检测提出了挑战。因此,识别和补充入侵检测系统的加密信息势在必行。本文设计了一个基于机器学习的框架,从网络流量中自动提取身份识别系统的关键信息。根据流量的特点,采用统计和序列的混合特征来描述加密流量。此外,应用监督分类算法探索了节点寻址的服务属性信息和数据管理的操作行为两个通信过程的有效分类。我们基于从真实身份解析系统收集的加密流量对该方法进行了测试。结果表明,该方法具有良好的性能,优于相关研究成果,可以应用于资源受限的工业场景。本文首次从流量分析的角度对身份识别系统进行了分析。
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