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Toward a reliable anomaly-based intrusion detection in real-world environments

机译:在现实环境中实现可靠的基于异常的入侵检测

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A popular approach for detecting network intrusion attempts is to monitor the network traffic for anomalies. Extensive research effort has been invested in anomaly-based network intrusion detection using machine learning techniques; however, in general these techniques remain a research topic, rarely being used in real-world environments. In general, the approaches proposed in the literature lack representative datasets and reliable evaluation methods that consider real-world network properties during the system evaluation. In general, the approaches adopt a set of assumptions about the training data, as well as about the validation methods, rendering the created system unreliable for open-world usage. This paper presents a new method for creating intrusion databases. The objective is that the databases should be easy to update and reproduce with real and valid traffic, representative, and publicly available. Using our proposed method, we propose a new evaluation scheme specific to the machine learning intrusion detection field. Sixteen intrusion databases were created, and each of the assumptions frequently adopted in studies in the intrusion detection literature regarding network traffic behavior was validated. To make machine learning detection schemes feasible, we propose a new multi-objective feature selection method that considers real-world network properties. The results show that most of the assumptions frequently applied in studies in the literature do not hold when using a machine learning detection scheme for network-based intrusion detection. However, the proposed multi-objective feature selection method allows the system accuracy to be improved by considering real-world network properties during the model creation process. (C) 2017 Elsevier B.V. All rights reserved.
机译:检测网络入侵尝试的一种流行方法是监视网络流量中的异常情况。已经使用机器学习技术对基于异常的网络入侵检测进行了广泛的研究。但是,总的来说,这些技术仍然是研究主题,很少在现实环境中使用。通常,文献中提出的方法缺乏代表性的数据集和可靠的评估方法,这些评估方法在系统评估过程中不考虑实际网络属性。通常,这些方法采用关于训练数据以及验证方法的一组假设,从而使创建的系统对于开放世界的使用不可靠。本文提出了一种创建入侵数据库的新方法。目的是数据库应易于更新和重现,具有真实有效的流量,具有代表性且可公开获得。使用我们提出的方法,我们提出了一种针对机器学习入侵检测领域的新评估方案。创建了十六个入侵数据库,并验证了入侵检测文献中有关网络流量行为的研究中经常采用的每个假设。为了使机器学习检测方案可行,我们提出了一种考虑实际网络属性的新的多目标特征选择方法。结果表明,当使用机器学习检测方案进行基于网络的入侵检测时,文献中经常采用的大多数假设都不成立。但是,提出的多目标特征选择方法允许通过在模型创建过程中考虑实际网络属性来提高系统精度。 (C)2017 Elsevier B.V.保留所有权利。

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