An Intelligent Test Method of Distributed Network Inbreak Based on Cluster Analysis

Zhang Yunyun
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Abstract

Due to the lack of large-scale processing of network data in the process of distributed network inbreak intelligent detection, the detection accuracy is low. Therefore, a distributed network inbreak intelligent test method based on cluster analysis is proposed. The distributed network data is preprocessed through data attribute feature transformation, data normalization, data standardization and data dimensionality reduction. According to the preprocessing results, the distributed network data collection is divided into multiple clusters using the fuzzy K-means clustering algorithm., compute the remove from each cluster centre to other data targets, use Euclidean remove to construct the goal function of partition quality, extract distributed network inbreak data, determine the cost function of the convolutional neural networks-gate recurrent unit network model, and use the stochastic gradient descent algorithm to The convolutional neural networks-gate recurrent unit network model is trained, and the extracted distributed network inbreak data is input as an initial sample into the trained convolutional neural networks-gate recurrent unit network model, the model is solved, and the distributed network inbreak intelligent detection results are output. The analysis of the experimental results shows that the proposed method has higher precision and better detection effect in the intelligent detection of distributed network inbreak.
基于聚类分析的分布式网络入侵智能测试方法
由于分布式网络入侵智能检测过程中缺乏对网络数据的大规模处理,导致检测精度较低。为此,提出了一种基于聚类分析的分布式网络入侵智能测试方法。通过数据属性特征转换、数据规范化、数据标准化和数据降维等步骤对分布式网络数据进行预处理。根据预处理结果,采用模糊k均值聚类算法将分布式网络数据集划分为多个聚类。,计算每个聚类中心到其他数据目标的移除量,利用欧氏移除构造分区质量的目标函数,提取分布式网络入侵数据,确定卷积神经网络-门递归单元网络模型的代价函数,并利用随机梯度下降算法对卷积神经网络-门递归单元网络模型进行训练。将提取的分布式网络入侵数据作为初始样本输入到训练好的卷积神经网络-门递归单元网络模型中,对模型进行求解,输出分布式网络入侵智能检测结果。实验结果分析表明,该方法在分布式网络入侵智能检测中具有较高的检测精度和较好的检测效果。
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