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A New FLAME Selection Method for Intrusion Detection (FLAME-ID)

机译:一种新的用于入侵检测的FLAME选择方法(FLAME-ID)

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摘要

Due to the ever growing number of cyber attacks, especially of the online systems, development and operation of adaptive Intrusion Detection Systems (IDSs) is badly needed so as to protect these systems. It remains as a goal of paramount importance to achieve and a serious challenge to address. Different selection methods have been developed and implemented in Genetic Algorithms (GAs) to enhance the rate of detection of the IDSs. In this respect, the present study employed the eXtended Classifier System (XCS) for detection of intrusions by matching the incoming environmental message (packet) with a classifiers pool to determine whether the incoming message is a normal request or an intrusion. Fuzzy Clustering by Local Approximation Membership (FLAME) represents the new selection method used in GAs. In this study, Genetic Algorithm with FLAME selection (FGA) was used as a production engine for the XCS. For comparison purposes, different selection methods were compared with FLAME selection and all experiments and evaluations were performed by using the KDD’99 dataset.
机译:由于越来越多的网络攻击,尤其是在线系统的网络攻击,迫切需要开发和运行自适应入侵检测系统(IDS)来保护这些系统。这仍然是实现这一目标的最重要目标,也是要解决的严峻挑战。已经开发并在遗传算法(GA)中实现了不同的选择方法,以提高IDS的检测率。在这方面,本研究采用扩展分类器系统(XCS)通过将传入的环境消息(数据包)与分类器池进行匹配来确定入侵消息是正常请求还是入侵,以检测入侵。基于局部近似成员的模糊聚类(FLAME)代表了GA中使用的新选择方法。在这项研究中,带有FLAME选择的遗传算法(FGA)被用作XCS的生产引擎。为了进行比较,将不同的选择方法与FLAME选择进行了比较,并使用KDD’99数据集进行了所有实验和评估。

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