采用模糊插值的入侵检测系统

Longzhi Yang, Jie Li, Gerhard Fehringer, P. Barraclough, G. Sexton, Yi Cao
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引用次数: 26

摘要

网络入侵检测系统识别恶意连接,从而帮助保护网络免受攻击。在网络入侵检测系统的开发中,采用了各种数据驱动的方法,但由于这种挑战的复杂性,往往导致系统过于复杂或泛化能力较差。本文提出了一种基于模糊插值的数据驱动网络入侵检测系统。特别地,所开发的系统配备了稀疏规则库,不仅保证了入侵检测的在线性能,而且还允许从现有知识库无法直接涵盖的情况中生成安全警报。该系统已应用于一个知名的数据集进行系统验证和评估,并产生了竞争性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrusion detection system by fuzzy interpolation
Network intrusion detection systems identify malicious connections and thus help protect networks from attacks. Various data-driven approaches have been used in the development of network intrusion detection systems, which usually lead to either very complex systems or poor generalization ability due to the complexity of this challenge. This paper proposes a data-driven network intrusion detection system using fuzzy interpolation in an effort to address the aforementioned limitations. In particular, the developed system equipped with a sparse rule base not only guarantees the online performance of intrusion detection, but also allows the generation of security alerts from situations which are not directly covered by the existing knowledge base. The proposed system has been applied to a well-known data set for system validation and evaluation with competitive results generated.
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