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Performance Enhancement of Intrusion detection System Using Bagging Ensemble Technique with Feature Selection

机译:具有袋状集合技术的入侵检测系统性能增强功能选择

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An intrusion detection system’s (IDS) key role is to recognise anomalous activities from both inside and outside the network system. In literature, many machine learning techniques have been proposed to improve the performance of IDS. To create a good IDS, a single classifier might not be powerful enough. To overcome this bottleneck researchers focus on hybrid/ensemble techniques. Such methods are more complex and computation intensive, but they provide greater accuracy and lower false alarm rates (FAR). In this paper, we propose a bagging ensemble that improves the performance of IDS in terms of accuracy and FAR where the NSL-KDD dataset has been used to classify benign and abnormal traffic. We have also applied the information gain-based feature selection method to select highly relevant features for improving the accuracy of the proposed technique and achieved 84.93 % accuracy and 2.45 % FAR on the test dataset.
机译:入侵检测系统(IDS)关键作用是识别网络系统内外的异常活动。 在文献中,已经提出了许多机器学习技术来提高IDS的性能。 要创建良好的ID,单个分类器可能不够强大。 克服这个瓶颈研究人员专注于混合/集合技术。 这些方法更复杂,计算密集,但它们提供更高的准确性和更低的误报率(远)。 在本文中,我们提出了一个袋装集合,可以在准确性和NSL-KDD数据集已用于分类良性和异常流量的情况下提高IDS的性能。 我们还应用了基于信息增益的特征选择方法来选择高度相关的功能,以提高所提出的技术的准确性,并在测试数据集上实现了84.93%的精度和2.45%。

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