Improving the Intrusion Detection using Discriminative Machine Learning Approach and Improve the Time Complexity by Data Mining Feature Selection Methods

K. Bajaj, Amita Arora
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引用次数: 42

Abstract

As the dependence of daily life is increasing on Internet technology, the attacks on the systems, servers are also rapidly increasing. The motives of attacks are to steal the confidential data from the systems or making the system unavailable to the authorised users. An effective approach is required to detect the intrusions to provide the defence to the Networks. First we applied the feature selection to reduce the dimensions of NSL-KDD data set. By feature reduction and machine learning approach we able to build Intrusion detection model to find attacks on system and improve the intrusion detection using the captured data. The intrusion detection accuracy of learning algorithms is also performed on the data set, without the level 21 attacks which is most easy to identify attacks, using learning algorithms and the success rate of proposed model is calculated over the attacks which are hard to detect.
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利用判别机器学习方法改进入侵检测,利用数据挖掘特征选择方法提高时间复杂度
随着人们日常生活对互联网技术的依赖程度越来越高,对系统、服务器的攻击也在迅速增加。攻击的动机是从系统中窃取机密数据或使系统对授权用户不可用。需要一种有效的方法来检测入侵,为网络提供防御。首先应用特征选择对NSL-KDD数据集进行降维。通过特征约简和机器学习的方法,我们可以建立入侵检测模型来发现对系统的攻击,并利用捕获的数据改进入侵检测。在不考虑最容易识别的21级攻击的情况下,对数据集进行了学习算法的入侵检测精度测试,并对难以检测的攻击进行了学习算法和模型的成功率计算。
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