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Dynamic Fuzzy Rule Interpolation and Its Application to Intrusion Detection

机译:动态模糊规则插值及其在入侵检测中的应用

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摘要

Fuzzy rule interpolation (FRI) offers an effective approach for making inference possible in sparse rule-based systems (and also for reducing the complexity of fuzzy models). However, requirements of fuzzy systems may change over time and hence, the use of a static rule base may affect the accuracy of FRI applications. Fortunately, an FRI system in action will produce interpolated rules in abundance during the interpolative reasoning process. While such interpolated results are discarded in existing FRI systems, they can be utilized to facilitate the development of a dynamic rule base in supporting subsequent inference. This is because the otherwise relinquished interpolated rules may contain possibly valuable information, covering regions that were uncovered by the original sparse rule base. This paper presents a dynamic fuzzy rule interpolation (D-FRI) approach by exploiting such interpolated rules in order to improve the overall system's coverage and efficacy. The resulting D-FRI system is able to select, combine, and generalize informative, frequently used interpolated rules for merging with the existing rule base while performing interpolative reasoning. Systematic experimental investigations demonstrate that D-FRI outperforms conventional FRI techniques, with increased accuracy and robustness. Furthermore, D-FRI is herein applied for network security analysis, in devising a dynamic intrusion detection system (IDS) through integration with the Snort software, one of the most popular open source IDSs. This integration, denoted as D-FRI-Snort hereafter, delivers an extra amount of intelligence to predict the level of potential threats. Experimental results show that with the inclusion of a dynamic rule base, by generalising newly interpolated rules based on the current network traffic conditions, D-FRI-Snort helps reduce both false positives and false negatives in intrusion detection.
机译:模糊规则插值(FRI)提供了一种有效的方法,可以在基于稀疏规则的系统中进行推理(并且还可以降低模糊模型的复杂性)。但是,模糊系统的要求可能会随时间变化,因此,使用静态规则库可能会影响FRI应用程序的准确性。幸运的是,运行中的FRI系统会在插补推理过程中大量产生插补规则。尽管这种插值结果在现有FRI系统中已被丢弃,但可以将其用于促进动态规则库的开发以支持后续推理。这是因为以其他方式放弃的插值规则可能包含可能有价值的信息,从而覆盖了原始稀疏规则库未发现的区域。本文提出了一种利用动态插值规则的动态模糊规则插值(D-FRI)方法,以提高整个系统的覆盖范围和有效性。最终的D-FRI系统能够选择,组合和归纳信息量大的,经常使用的内插规则,以便在执行内插推理时与现有规则库合并。系统的实验研究表明,D-FRI在提高准确性和鲁棒性方面优于传统FRI技术。此外,在通过与最流行的开放源IDS之一Snort软件集成来设计动态入侵检测系统(IDS)时,D-FRI在本文中用于网络安全分析。此集成在下文中称为D-FRI-Snort,可提供更多情报以预测潜在威胁的程度。实验结果表明,在包含动态规则库的情况下,D-FRI-Snort通过基于当前网络流量条件对新内插的规则进行概括,有助于减少入侵检测中的误报和误报。

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