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Intrusion detection model using machine learning algorithm on Big Data environment

机译:大数据环境下基于机器学习算法的入侵检测模型

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Abstract Recently, the huge amounts of data and its incremental increase have changed the importance of information security and data analysis systems for Big Data. Intrusion detection system (IDS) is a system that monitors and analyzes data to detect any intrusion in the system or network. High volume, variety and high speed of data generated in the network have made the data analysis process to detect attacks by traditional techniques very difficult. Big Data techniques are used in IDS to deal with Big Data for accurate and efficient data analysis process. This paper introduced Spark-Chi-SVM model for intrusion detection. In this model, we have used ChiSqSelector for feature selection, and built an intrusion detection model by using support vector machine (SVM) classifier on Apache Spark Big Data platform. We used KDD99 to train and test the model. In the experiment, we introduced a comparison between Chi-SVM classifier and Chi-Logistic Regression classifier. The results of the experiment showed that Spark-Chi-SVM model has high performance, reduces the training time and is efficient for Big Data.
机译:摘要近来,海量数据及其不断增加,改变了信息安全和数据分析系统对大数据的重要性。入侵检测系统(IDS)是一种监视和分析数据以检测系统或网络中任何入侵的系统。网络中生成的数据量大,种类多,速度快,使得数据分析过程很难检测传统技术的攻击。 IDS使用大数据技术来处理大数据,以进行准确而高效的数据分析过程。本文介绍了用于入侵检测的Spark-Chi-SVM模型。在此模型中,我们使用ChiSqSelector进行特征选择,并通过在Apache Spark Big Data平台上使用支持向量机(SVM)分类器构建了入侵检测模型。我们使用KDD99训练和测试模型。在实验中,我们介绍了Chi-SVM分类器和Chi-Logistic回归分类器之间的比较。实验结果表明,Spark-Chi-SVM模型具有较高的性能,减少了训练时间,对大数据有效。

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