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An Effective Technique For Intrusion Detection Using Neuro-Fuzzy And Radial SVM Classifier

机译:利用神经模糊和径向SVM分类器进行入侵检测的有效技术

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Intrusion detection is not yet a perfect technology. This has given data mining the opportunity to make several important contributions to the field of intrusion detection. In this paper, we have proposed a new technique by utilizing data mining techniques such as neuro-fuzzy and radial basis support vector machine (SVM) for the intrusion detection system. The proposed technique has four major steps in which, first step is to perform the Fuzzy C-means clustering (FCM). Then, neuro-fuzzy is trained, such that each of the data point is trained with the corresponding neuro-fuzzy classifier associated with the cluster. Subsequently, a vector for SVM classification is formed and in the fourth step, classification using radial SVM is performed to detect intrusion has happened or not. Data set used is the KDD cup 99 dataset and we have used sensitivity, specificity and accuracy as the evaluation metrics parameters. Our technique could achieve better accuracy for all types of intrusions. It achieved about 98.94% accuracy in case of DOS attack and reached heights of 97.11% accuracy in case of PROBE attack. In case of R2L and U2R attacks it has attained 97.78 and 97.80% accuracy respectively. We compared the proposed technique with the other existing state of art techniques. These comparisons proved the effectiveness of our technique.
机译:入侵检测还不是完美的技术。这为数据挖掘提供了在入侵检测领域做出一些重要贡献的机会。在本文中,我们通过利用数据挖掘技术(例如神经模糊和径向基支持向量机(SVM))为入侵检测系统提出了一种新技术。所提出的技术有四个主要步骤,其中第一步是执行模糊C均值聚类(FCM)。然后,对神经模糊进行训练,以使每个数据点都使用与群集关联的相应神经模糊分类器进行训练。随后,形成用于SVM分类的向量,并且在第四步骤中,执行使用径向SVM的分类以检测入侵是否发生。所使用的数据集是KDD cup 99数据集,并且我们已使用敏感性,特异性和准确性作为评估指标参数。我们的技术可以针对所有类型的入侵实现更高的准确性。在DOS攻击下,它的精度约为98.94%;在PROBE攻击下,它的精度高达97.11%。在R2L和U2R攻击的情况下,其准确率分别达到97.78%和97.80%。我们将提出的技术与其他现有技术水平进行了比较。这些比较证明了我们技术的有效性。

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