Improvement of Network Intrusion Detection Accuracy by Using Restricted Boltzmann Machine

Sang-Il Seo, Seongchul Park, Juntae Kim
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引用次数: 18

Abstract

In various data of network intrusion detection used for classification algorithm's learning, a great deal of noise and outlier data are mixed. In case of a learning performed by using data of high impurities, no matter how the performance of classification algorithm is outstanding, any network intrusion detection model of high performance becomes hard to anticipate. To increase the accuracy of network intrusion detection, not only the performance of classification algorithm should be increased but also the management on noises and outliers in the data used for the classification algorithm's learning. Restricted Boltzmann Machine (RBM) is a type of unsupervised learning that doesn't use class labels. RBM is a probabilistic generative model that composes new data on input data based on the trained probability. The new data composed through RBM show that the noises and outliers are removed from the input data. When the newly composed data are applied to the network intrusion detection model, negative effects from the noise and outlier data to the learning are eliminated. In this study, noises and outliers in KDD Cup 1999 Data are removed by applying the data to RBM and composing a new data. Then, use results between the existing data and the data from which noises and outliers are removed are compared. In conclusion, this study demonstrates the performance improvement of network intrusion detection resulted by removing noises and outliers included in the data through RBM.
利用受限玻尔兹曼机提高网络入侵检测精度
在用于分类算法学习的各种网络入侵检测数据中,混杂着大量的噪声和离群数据。在使用高杂质数据进行学习的情况下,无论分类算法的性能如何突出,任何高性能的网络入侵检测模型都会变得难以预测。为了提高网络入侵检测的准确率,不仅要提高分类算法的性能,而且要对分类算法学习所用数据中的噪声和离群值进行管理。受限玻尔兹曼机(RBM)是一种不使用类标签的无监督学习。RBM是一种基于训练概率在输入数据上生成新数据的概率生成模型。通过RBM合成的新数据表明,从输入数据中去除了噪声和异常值。将新合成的数据应用到网络入侵检测模型中,消除了噪声和离群数据对学习的负面影响。本研究将1999年KDD Cup数据应用到RBM中,组成一个新的数据,去除噪声和异常值。然后,将现有数据与去噪、去离群值数据的使用结果进行比较。综上所述,本研究表明通过RBM去除数据中的噪声和异常值可以提高网络入侵检测的性能。
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