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IWO Optimization SKohonen Network in the Application of Detecting Malicious Domain Name

机译:IWO优化SKohonen网络在恶意域名检测中的应用。

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As one of the main ways to destroy network security, malicious domain name attack often brings economic loss and privacy leakage to enterprises and users. In this paper, a malicious domain name detection model is proposed to optimize SKohonen network based on IWO algorithm. The location information of weed individuals with the smallest fitness value is generated by IWO algorithm as the optimal solution of IWO algorithm. The optimal solution is set as the initial weight vector parameter of SKohonen neural network, and the domain name data set is predicted and classified. Then it is compared with the malicious domain name detection model of SKohonen neural network, and measured by classification histogram, confusion matrix, ROC curve and AUC value. The results show that the malicious domain name detection model based on IWO algorithm to optimize SKohonen network is better for the classification of malicious domain names. In the prevention of malicious domain name attack direction, has high practical value.(Abstract)
机译:恶意域名攻击是破坏网络安全的主要方法之一,经常给企业和用户带来经济损失和隐私泄露。本文提出了一种基于IWO算法的恶意域名检测模型,以优化SKohonen网络。通过IWO算法生成适应度最小的杂草个体的位置信息,作为IWO算法的最优解。将最优解设置为SKohonen神经网络的初始权重向量参数,并对域名数据集进行预测和分类。然后将其与SKohonen神经网络的恶意域名检测模型进行比较,并通过分类直方图,混淆矩阵,ROC曲线和AUC值进行测量。结果表明,基于IWO算法优化SKohonen网络的恶意域名检测模型对于恶意域名的分类具有较好的效果。在预防恶意域名的攻击方向上,具有较高的实用价值。

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