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Entropy-Based Feature Selection for Network Anomaly Detection

机译:基于熵的网络异常检测特征选择

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摘要

Over the decades, ensuring security of networks has been a major concern; the open-ended nature of networks though promoting its ease of use and connectivity has also contributed its security challenges. The growth in technology fosters the developments of varies gadgets but this growth has also been harnessed by intruders to develop new and more sophisticated ways of breaking into a network, hence the need for continual research in developing more sophisticated methods that can detect new day attacks in a various types of networks. Different algorithms have been used in building network security systems; however, in spite of their effectiveness, these algorithms also have different disadvantages that reduce its performance. A major way of improving the performance is through feature selection. This research focuses on how feature selection methods can be used to improve the performance of the minimum distance classifier using the UNB/IDS 2012 dataset. The performance of the classifier is optimized using two basic feature selection methods: entropy and variance, then a k-fold cross validation is performed to validate the accuracy results.
机译:几十年来,确保网络的安全是一个主要问题;网络的开放性本质虽然促进其易用性和连接也促进了安全挑战。技术的增长促进了各种各样的小工具的发展,但入侵者也已经利用了这种增长,以发展新的和更复杂的闯入网络的方式,因此需要持续研究更加复杂的方法,这些方法可以检测可以检测到新的一天攻击的更复杂的方法各种类型的网络。建设网络安全系统中使用了不同的算法;然而,尽管它们的有效性,但这些算法也具有不同的缺点,从而降低其性能。提高性能的主要方式是通过特征选择。本研究侧重于如何使用特征选择方法来使用UNB / ID 2012数据集来改善最小距离分类器的性能。使用两个基本特征选择方法优化分类器的性能:熵和方差,然后执行k折交叉验证以验证精度结果。

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