基于联邦培训的入侵检测方法分析分析:使用优势和开放目标

Evgenia Novikova, Elena Fedorchenko, Igor Kotenko, Ivan Kholod
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引用次数: 0

摘要

入侵检测系统需要收集和分析大量数据,以准确和及时地应对不同类型的攻击,这些数据可能包括个人资料或商业机密等访问受限的信息。因此,此类系统可被视为处理敏感信息和破坏其安全性相关的额外风险来源。应用联邦学习范式来构建攻击和异常检测的分析模型可以显著降低此类风险,因为本地生成的数据不会传输到任何第三方,模型训练是在本地数据源上完成的。使用联邦训练进行入侵检测解决了对属于不同组织的数据进行训练的问题,由于需要保护商业或其他秘密,这些数据不能放在公共领域。因此,这种方法还允许我们扩展和多样化训练机器学习模型的数据集,从而提高异构攻击的可检测性水平。由于该方法可以克服上述问题,因此被积极用于设计新的入侵和异常检测方法。作者系统地探索了基于联邦学习的入侵和异常检测的现有解决方案,研究了它们的优势,并提出了与其在实践中的应用相关的开放挑战。特别关注所提出系统的体系结构,所使用的入侵检测方法和模型,以及对多个系统用户之间的交互建模和在其中分发数据的方法进行了讨论。为了在实践中应用基于联邦学习的入侵检测系统,作者提出了需要解决的开放性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Аналитический обзор подходов к обнаружению вторжений, основанных на федеративном обучении: преимущества использования и открытые задачи
To provide an accurate and timely response to different types of attacks, intrusion detection systems collect and analyze a large amount of data, which may include information with limited access, such as personal data or trade secrets. Consequently, such systems can be seen as an additional source of risks associated with handling sensitive information and breaching its security. Applying the federated learning paradigm to build analytical models for attack and anomaly detection can significantly reduce such risks because locally generated data is not transmitted to any third party, and model training is done locally - on the data sources. Using federated training for intrusion detection solves the problem of training on data that belongs to different organizations, and which, due to the need to protect commercial or other secrets, cannot be placed in the public domain. Thus, this approach also allows us to expand and diversify the set of data on which machine learning models are trained, thereby increasing the level of detectability of heterogeneous attacks. Due to the fact that this approach can overcome the aforementioned problems, it is actively used to design new approaches for intrusion and anomaly detection. The authors systematically explore existing solutions for intrusion and anomaly detection based on federated learning, study their advantages, and formulate open challenges associated with its application in practice. Particular attention is paid to the architecture of the proposed systems, the intrusion detection methods and models used, and approaches for modeling interactions between multiple system users and distributing data among them are discussed. The authors conclude by formulating open problems that need to be solved in order to apply federated learning-based intrusion detection systems in practice.
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