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A Study of Feature Reduction Techniques and Classification for Network Anomaly Detection

机译:网络异常检测特征减少技术及分类研究

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摘要

Due to the launch of new applications the behavior of Internet traffic is changing. Hackers are always looking for sophisticated tools to launch attacks and damage the services. Researchers have been working on intrusion detection techniques involving machine learning algorithms for supervised and unsupervised detection of these attacks. However, with newly found attacks these techniques need to be refined. Handling data with large number of attributes adds to the problem. Therefore, dimensionality based feature reduction of the data is required. In this work three reduction techniques, namely, Principal Component Analysis (PCA), Artificial Neural Network (ANN), and Nonlinear Principal Component Analysis (NLPCA) have been studied and analyzed. Secondly, performance of four classifiers, namely, Decision Tree (DT), Support Vector Machine (SVM), K Nearest Neighbor (KNN) and Naive Bayes (NB) has been studied for the actual and reduced datasets. In addition, novel performance measurement metrics, Classification Difference Measure (CDM), Specificity Difference Measure (S_PDM), Sensitivity Difference Measure (S_NDM), and F1 Difference Measure (F1DM) have been defined and used to compare the outcomes on actual and reduced data-sets. Comparisons have been done using new Coburg Intrusion Detection Data Set (CIDDS-2017) dataset as well widely referred NSL-KDD dataset. Successful results were achieved for Decision Tree with 99.0 percent and 99.8 percent accuracy on CIDDS and NSL-KDD datasets respectively.
机译:由于新应用程序的推出,互联网流量的行为正在发生变化。黑客一直在寻找先进的工具来发动攻击和损坏服务。研究人员一直致力于涉及机器学习算法的入侵检测技术,用于监督和无监督这些攻击的检测。但是,随着新发现的攻击,需要精制这些技术。处理具有大量属性的数据增加了问题。因此,需要基于维度的特征减少数据。在这项工作中,研究并分析了三种减少技术,即主成分分析(PCA),人工神经网络(PCA),人工神经网络(ANN)和非线性主成分分析(NLPCA)。其次,已经研究了四个分类器的性能,即决策树(DT),支持向量机(SVM),K最近邻居(KNN)和NAIVE Bayes(NB)的实际数据集。此外,已经定义了新颖性能测量度量,分类差异测量(CDM),特异性差异测量(S_PDM)和F1差异测量(F1DM),并用于比较实际和减少数据的结果-套。使用新的Coburg入侵检测数据集(CIDDS-2017)数据集以及广泛传播的NSL-KDD数据集进行了比较。决策树以99.0%和99.8%的精度分别实现了成功的结果,分别为CIDD和NSL-KDD数据集。

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