基于贝叶斯规则学习的MQTT通信协议入侵检测系统

Qi Liu, H. Keller, V. Hagenmeyer
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引用次数: 5

摘要

基于规则学习的入侵检测系统(IDS)定期收集和处理网络流量,然后对数据应用规则学习算法来识别以IF-THEN规则表示的网络通信行为。检测规则离线推断,在线定期自动更新,用于入侵检测。在这种情况下,我们在本文中实现了针对MQTT的各种攻击,这些攻击是在一个精心设计和非常现实的实验环境中实现的,而不是像以前的作品中常见的模拟程序,用于数据生成。此外,我们还研究了一种基于贝叶斯规则学习的方法作为对策,该方法能够检测各种攻击类型。贝叶斯网络从训练数据中学习,随后转化为入侵检测的规则集。先验知识(关于通信协议和目标系统)与数据的结合有助于有效地学习贝叶斯网络。从贝叶斯网络到一组内在可解释的规则的转换可以看作是隐含知识到显式知识的转换。结果表明,该方法不仅具有良好的检测性能,而且具有较高的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian Rule Learning Based Intrusion Detection System for the MQTT Communication Protocol
Rule learning based intrusion detection systems (IDS) regularly collect and process network traffic, and thereafter they apply rule learning algorithms to the data to identify network communication behaviors represented as IF-THEN rules. Detection rules are inferred offline and can be periodically automatically updated online for intrusion detection. In this context, we implement in the present paper various attacks against MQTT in a carefully designed and very realistic experiment environment, instead of a simulation program as commonly seen in previous works, for data generation. Besides, we investigate a Bayesian rule learning based approach as countermeasure, which is able to detect various attack types. A Bayesian network is learned from training data and subsequently translated into a rule set for intrusion detection. The combination of prior knowledge (about the communication protocol and target system) and data help to efficiently learn the Bayesian network. The translation from the Bayesian network to a set of inherently interpretable rules can be regarded as a transformation from implicit knowledge to explicit knowledge. We show that our proposed method can achieve not only good detection performance but also high interpretability.
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