Improving the Anomaly Detection by Combining PSO Search Methods and J48 Algorithm

Kurniabudi, A. Harris, Albertus Edward Mintaria, Darmawijoyo, D. Stiawan, Mohd Yazid Bin Idris, R. Budiarto
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引用次数: 5

Abstract

The feature selection techniques are used to find the most important and relevant features in a dataset. Therefore, in this study feature selection technique was used to improve the performance of Anomaly Detection. Many feature selection techniques have been developed and implemented on the NSL-KDD dataset. However, with the rapid growth of traffic on a network where more applications, devices, and protocols participate, the traffic data is complex and heterogeneous contribute to security issues. This makes the NSL-KDD dataset no longer reliable for it. The detection model must also be able to recognize the type of novel attack on complex network datasets. So, a robust analysis technique for a more complex and larger dataset is required, to overcome the increase of security issues in a big data network. This study proposes particle swarm optimization (PSO) Search methods as a feature selection method. As contribute to feature analysis knowledge, In the experiment a combination of particle swarm optimization (PSO) Search methods with other search methods are examined. To overcome the limitation NSL-KDD dataset, in the experiments the CICIDS2017 dataset used. To validate the selected features from the proposed technique J48 classification algorithm used in this study. The detection performance of the combination PSO Search method with J48 examined and compare with other feature selection and previous study. The proposed technique successfully finds the important features of the dataset, which improve detection performance with 99.89% accuracy. Compared with the previous study the proposed technique has better accuracy, TPR, and FPR.
结合粒子群搜索方法和J48算法改进异常检测
特征选择技术用于在数据集中找到最重要和最相关的特征。因此,本研究采用特征选择技术来提高异常检测的性能。在NSL-KDD数据集上已经开发和实现了许多特征选择技术。但是,随着网络中应用、设备和协议的增多,流量的快速增长,流量数据的复杂性和异构性导致了安全问题。这使得NSL-KDD数据集不再可靠。检测模型还必须能够识别复杂网络数据集上的新型攻击类型。因此,需要一种针对更复杂、更大数据集的强大分析技术,以克服大数据网络中日益增加的安全问题。本研究提出粒子群优化(PSO)搜索方法作为特征选择方法。为了增加特征分析知识,在实验中研究了粒子群优化(PSO)搜索方法与其他搜索方法的结合。为了克服NSL-KDD数据集的局限性,在实验中使用了CICIDS2017数据集。为了验证本研究中使用的J48分类算法所选择的特征。结合J48对PSO搜索方法的检测性能进行了检验,并与其他特征选择和前人的研究进行了比较。该方法成功地发现了数据集的重要特征,提高了检测性能,准确率达到99.89%。与以往的研究相比,该方法具有更高的精度、TPR和FPR。
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