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An Exhaustive Research on the Application of Intrusion Detection Technology in Computer Network Security in Sensor Networks

机译:彻底研究入侵检测技术在传感器网络计算机网络安全中的应用

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Intrusion detection is crucial in computer network security issues; therefore, this work is aimed at maximizing network security protection and its improvement by proposing various preventive techniques. Outlier detection and semisupervised clustering algorithms based on shared nearest neighbors are proposed in this work to address intrusion detection by converting it into a problem of mining outliers using the network behavior dataset. The algorithm uses shared nearest neighbors as similarity, judges whether it is an outlier according to the number of nearest neighbors of a data point, and performs semisupervised clustering on the dataset where outliers are deleted. In the process of semisupervised clustering, vast prior knowledge is added, and the dataset is clustered according to the principle of graph segmentation. The novelty of the proposed algorithm lies in outlier detection while effectively avoiding the dependence on parameters, thus eliminating the influence of outliers on clustering. This article uses real datasets: lypmphography and glass for simulation purposes. The simulation results show that the algorithm proposed in this paper can effectively detect outliers and has a good clustering effect. Furthermore, the experimentation reveals that the outlier detection-based SCA-SNN algorithm has the best practical effect on the dataset without outliers, clearly validating the clustering performance of the outlier detection-based SCA-SNN algorithm. Furthermore, compared to the other state-of-the-art anomaly detection method, it was revealed that the anomaly detection technology based on outlier mining does not require a training process. Thus, they overcome the current anomaly detection problems caused due to incomplete normal patterns in training samples.
机译:入侵检测对于计算机网络安全问题至关重要;因此,这项工作旨在通过提出各种预防技术来最大化网络安全保护及其改进。在这项工作中提出了基于共享最近邻居的基于共享最近邻居的群集算法,以解决使用网络行为数据集的挖掘异常值问题来解决入侵检测。该算法使用共享的最近邻居作为相似性,判断是否根据数据点的最近邻居数量是一个异常,并且在DataSet上执行半级经过群集,其中删除异常值。在半熟的聚类过程中,添加了巨大的先验知识,并根据图分段的原理群集数据集。所提出的算法的新颖性在于异常检测,同时有效地避免了对参数的依赖性,从而消除了异常值对聚类的影响。本文使用真实数据集:leypphoge和玻璃用于仿真目的。仿真结果表明,本文提出的算法可以有效地检测异常值并具有良好的聚类效果。此外,实验表明,基于异常的SCA-SNN算法对数据集具有最佳实际效果,而没有异常值,明显验证了基于异常值检测的SCA-SNN算法的聚类性能。此外,与其他最先进的异常检测方法相比,揭示了基于异常挖掘的异常检测技术不需要培训过程。因此,它们克服了由于训练样本中不完全正常模式而导致的当前异常的检测问题。

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