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Anomaly Intrusions Detection Based on Support Vector Machines with an Improved Bat Algorithm

机译:基于支持向量机的改进蝙蝠算法异常入侵检测

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The continuous proliferation of more complex and various security threats leads to the conclusion that new solutions are required. Intrusion Detection Systems can be a pertinent solution because they can deal with the large data volumes of logs gathered from the multitude of systems and can even identify new types of attacks if based on anomaly detection. In this paper we propose an IDS model which includes two stages: feature selection with information gain and detection with Support Vector Machines (SVM). A draw-back of SVM is that its performance results are influenced by its user input parameters. Therefore, in order to better the classifier we exploit the advantages of a recent Swarm Intelligence (SI) algorithm, the Bat Algorithm (BA), which we improve by enhancing its randomization with L??vy flights. We test our model for the NSL-KDD dataset and prove that it can outperform the original BA, ABC or the popular PSO.
机译:更复杂和各种安全威胁的不断扩散导致得出结论,即需要新的解决方案。入侵检测系统可能是一个合适的解决方案,因为它们可以处理从多个系统收集的大量日志数据,并且如果基于异常检测,甚至可以识别新型攻击。在本文中,我们提出了一个IDS模型,该模型包括两个阶段:具有信息增益的特征选择和基于支持向量机(SVM)的检测。 SVM的缺点是其性能结果受其用户输入参数的影响。因此,为了更好地分类,我们利用了最新的群体智能(SI)算法,蝙蝠算法(BA)的优势,我们通过使用Lvyvy飞行增强其随机性来进行改进。我们针对NSL-KDD数据集测试了我们的模型,并证明它可以胜过原始BA,ABC或流行的PSO。

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