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A novel combinatorial optimization based feature selection method for network intrusion detection

机译:基于组合优化的网络入侵检测特征选择方法

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摘要

The advancements in communication technologies and ubiquitous accessibility to a wide array of services has opened many challenges. Growing numbers of cyberattacks show that current security solutions and technologies do not provide effective safeguard against modern attacks. Intrusion is one of the main issue that has gone viral and can compromise the security of a network of any size. Intrusion Detection / Prevention Systems (IDS / IPS) are used to monitor, inspect and possibly block attacks. However, traditional intrusion detection techniques like signature or anomaly (network behavior) based approaches are prone to many weaknesses. Advancements in machine learning algorithms, data mining and soft computing techniques have shown potential to be used in IDS. All of these technologies, specially machine learning algorithms have to deal with the issue of high dimensionality of data /network traffic data as high dimensional data makes data sparse in hyper-space which restricts different algorithms scaling and generalization capabilities. Secondly, the problem magnitude also grows exponentially when IDS needs to make decision in a real time environment. One of the solution is to tackle this issue is to use feature selection techniques to reduce dimensionality of data. Feature selection is a process of selecting the optimal subset of features from a large feature-set to improve classification accuracy, performance and cost of extracting features. In this paper, we proposed a wrapper-based feature selection method called 'Tabu Search - Random Forest (TS-RF)'. Tabu search is used as a search method while random forest is used as a learning algorithm for Network Intrusion Detection Systems (NIDS). The proposed model is tested on the UNSW-NB15 dataset. The obtained results compared with other feature selection approaches. Results show that TS-RF improves classification accuracy while reducing number of features and false positive rate simultaneously.
机译:通信技术的进步和对广泛服务的无处不在的服务已经开辟了许多挑战。越来越多的网络攻击表明,目前的安全解决方案和技术不提供对现代攻击的有效保障。侵入是存在病毒的主要问题之一,并且可以损害任何大小的网络的安全性。入侵检测/预防系统(IDS / IPS)用于监视,检查和可能阻止攻击。然而,传统的入侵检测技术,如签名或异常(网络行为)的方法易于许多弱点。机器学习算法的进步,数据挖掘和软计算技术已经示出了IDS中使用的可能性。所有这些技术,专门的机器学习算法必须处理数据/网络流量数据的高度高度的问题,因为高维数据使得在超空间中的数据稀疏,这限制了不同的算法缩放和泛化能力。其次,当IDS需要在实时环境中做出决定时,问题幅度也呈指数增长。其中一个解决方案是解决这个问题是使用特征选择技术来减少数据的维度。特征选择是从大型功能集中选择最佳功能子集的过程,以提高提取功能的分类精度,性能和成本。在本文中,我们提出了一种基于包装的特征选择方法,称为“Tabu搜索 - 随机林(TS-RF)”。禁忌搜索用作搜索方法,而随机森林用作网络入侵检测系统(NID)的学习算法。在UNSW-NB15数据集上测试了所提出的模型。与其他特征选择方法相比,得到的结果。结果表明,TS-RF可提高分类准确性,同时减少特征数和误率。

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