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Development of an Efficient Network Intrusion Detection Model Using Extreme Gradient Boosting (XGBoost) on the UNSW-NB15 Dataset

机译:在UNSW-NB15数据集上使用极端梯度增强(XGBoost)开发有效的网络入侵检测模型

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Network intrusion detection systems are used to help protect and secure network infrastructures. Efficient network intrusion models are required to analyze and assess both present and future network attacks. Various machine learning methods have been developed and evaluated to attempt to efficiently analyze and predict network intrusion attacks to determine network attributes that may contribute to a particular attack type. In this study, we evaluated the UNSW-NB15 data set, represents modern day network attacks and network traffic compared to the previous standard KDD99 data set. Among various machine learning algorithms, extreme gradient boosting (XGBoost) that provides highly efficient and accurate data predictive model were used. We also were able to select a subset of 23 out of 39 usable features using information gain obtained through XGBoost to help distinguish network attack types. Through bivariate analysis, we could compute the percentage of records in a particular value range correspond to an attack type. The final XGBoost model that was developed uses 23 features, may be used for any future network intrusion data where these 23 features are available to easily and efficiently predict network attack types.
机译:网络入侵检测系统用于帮助保护和保护网络基础设施。需要有效的网络入侵模型来分析和评估当前和将来的网络攻击。已经开发和评估了各种机器学习方法,以尝试有效地分析和预测网络入侵攻击,以确定可能导致特定攻击类型的网络属性。在这项研究中,我们评估了UNSW-NB15数据集,该数据集与以前的标准KDD99数据集相比,代表了现代网络攻击和网络流量。在各种机器学习算法中,使用了提供高效且准确的数据预测模型的极端梯度增强(XGBoost)。通过使用XGBoost获得的信息增益,我们还能够从39个可用功能中选择23个子集,以帮助区分网络攻击类型。通过双变量分析,我们可以计算出与攻击类型相对应的特定值范围内的记录百分比。开发的最终XGBoost模型使用23种功能,可用于将来的任何网络入侵数据,这些23种功能可用于轻松高效地预测网络攻击类型。

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