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An efficient feature selection based Bayesian and Rough set approach for intrusion detection

机译:基于贝叶斯和粗糙集的入侵检测方法

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The exponential growth of network size leads to increase attacks and intrusions. Detection of these attacks from the network has turned into a noteworthy issue of security. An intrusion detection system is an important approach to achieves high detection rate. A high dimensional dataset increase complexities of detection systems. In this paper, we have designed a novel intelligent system that comprises the feature selection with a hybrid approach of the Rough set theory and the Bayes theorem. The proposed feature selection computed core features and ranked them based on estimated probability. In a decision system, an object may belong to a single or multiple decision, and a feature contains a set of objects that occurrences compute an estimated probability. The rough set theory is being applied to classify information into lower and upper approximations. Uncertain information is distinguished using rough set approximations and solved by the Bayes theorem. In this research work, it has also been highlighted the quantitative realism of recently generated dataset and compared to publicly available datasets. This approach reduces false alarm rate, computational complexity, training complexity and increases detection rate. Comparisons with relevant classifiers are also tabled that show proposed method performs better than existing classifiers. (C) 2019 Elsevier B.V. All rights reserved.
机译:网络大小的指数增长导致增加攻击和入侵。从网络中检测这些攻击已经变成了一个值得注意的安全问题。入侵检测系统是实现高检测率的重要方法。高维数据集增加了检测系统的复杂性。在本文中,我们设计了一种新颖的智能系统,包括具有粗糙集理论和贝叶斯定理的混合方法的特征选择。所提出的特征选择计算了核心特征,并根据估计概率排列它们。在决策系统中,对象可以属于单个或多个决定,并且特征包含一组对象,该对象发生成计算估计概率。粗糙集理论正在应用于将信息分类为较低和上近似。使用粗糙集近似和由贝叶斯定理解决的不确定信息。在这项研究工作中,它还突出显示最近生成的数据集的定量现实主义,并与公共可用数据集进行比较。该方法可降低误报率,计算复杂性,培训复杂性并提高检测率。还提出了具有相关分类器的比较,显示所提出的方法比现有分类器更好。 (c)2019年Elsevier B.V.保留所有权利。

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