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A robust ensemble of neuro-fuzzy classifiers for DDoS attack detection

机译:用于DDoS攻击检测的神经模糊分类器的强大集合

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Recent studies show that Distributed Denial of Service (DDoS) attacks play an important role in the security of computers because they can decrease the efficiency of victim resources within a short period of time. In this paper, an innovative ensemble of Sugeno type adaptive neuro-fuzzy classifiers has been proposed for attack detection using an effective boosting technique named Marliboost. Detection accuracy and false positive alarms are two measurements used to evaluate the performance of the proposed technique. Experimental results on the optimized randomly selected subset of NSL-KDD confirm that the proposed ensemble of classifiers has higher detection accuracy (96%) in comparison with the other widely used machine learning techniques. Moreover, false positive alarms have been greatly reduced by applying the presented technique.
机译:最近的研究表明,分布式拒绝服务(DDoS)攻击在计算机安全中起着重要作用,因为它们可以在短时间内降低受害者资源的效率。在本文中,已经提出了一种创新的Sugeno型自适应神经模糊分类器集合,该分类器使用一种名为Marliboost的有效增强技术来进行攻击检测。检测准确性和误报警报是用于评估所提出技术性能的两种测量方法。对NSL-KDD的优化随机选择子集进行的实验结果证实,与其他广泛使用的机器学习技术相比,所提出的分类器集合具有更高的检测精度(96%)。此外,通过应用所提出的技术,误报肯定已经大大减少了。

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