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Nonlinear dimensionality reduction for intrusion detection using auto-encoder bottleneck features

机译:使用自动编码器瓶颈功能进行入侵检测的非线性降维

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The continuous advances in technology is the reason of integration of our lives and information systems. Due to this fact the importance of security in these systems increases. Therefore, the application of intrusion detection systems as security solutions is increasing year by year. These systems (IDSs) are considered as a way of protection against cyber-attacks. However, handling big data constitutes one of the main challenges of intrusion detection systems and is the reason of low performance of these systems from the view of time and space complexity. To address these problems we have proposed an approach to reduce this complexity. Our approach is based on dimensionality reduction and the neural network bottleneck feature extraction is considered as the main method in this research. We have conducted several experiments on a benchmark dataset (NSL-KDD) to investigate the effectiveness of our approach. The results show that our approach is promising in terms of accuracy for real-world intrusion detection.
机译:技术的不断进步是我们生活和信息系统整合的原因。由于这个事实,这些系统中安全性的重要性增加了。因此,入侵检测系统作为安全解决方案的应用正在逐年增加。这些系统(IDS)被认为是防范网络攻击的一种方式。但是,处理大数据构成了入侵检测系统的主要挑战之一,并且从时间和空间复杂性的角度来看,这也是这些系统性能低下的原因。为了解决这些问题,我们提出了一种减少这种复杂性的方法。我们的方法基于降维,而神经网络瓶颈特征提取被认为是该研究的主要方法。我们已经在基准数据集(NSL-KDD)上进行了几次实验,以研究该方法的有效性。结果表明,我们的方法在实际入侵检测的准确性方面很有前途。

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