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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Application of artificial fish swarm optimization semi-supervised kernel fuzzy clustering algorithm in network intrusion
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Application of artificial fish swarm optimization semi-supervised kernel fuzzy clustering algorithm in network intrusion

机译:人工鱼类群优化半监控内核模糊聚类算法在网络侵犯中的应用

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摘要

For the unsupervised learning based clustering algorithm, the intrusion detection rate is low, and the training sample based on supervised learning clustering algorithm is insufficient. A semi-supervised kernel fuzzy C-means clustering algorithm based on artificial fish swarm optimization (AFSA-KFCM) is proposed. Firstly, the kernel function is used to change the distance function in the traditional semi-supervised fuzzy C-means clustering algorithm to define a new objective function, thus improving the probabilistic constraints of the fuzzy C-means algorithm. Then, the artificial fish swarm algorithm with strong global optimization ability is used to improve the KFCM sensitivity to the initial cluster center and easy to fall into the local extremum, thus improving the convergence speed and improving the classification effect. The test results in the Wine and IRIS public datasets show that the AFSA-KFCM clustering algorithm is superior to the traditional algorithm in clustering accuracy and time efficiency. At the same time, the experimental results in KDDCUP99 experimental data show that the algorithm can obtain the ideal detection rate and false detection rate in intrusion detection.
机译:对于无监督的基于学习的聚类算法,入侵检测率低,并且基于监督学习聚类算法的训练样本不足。提出了一种基于人工鱼类群优化(AFSA-KFCM)的半监督内核模糊C-均值聚类算法。首先,内核函数用于改变传统的半监督模糊C型聚类算法中的距离功能以定义新的目标函数,从而改善模糊C型算法的概率约束。然后,使用具有强大的全球优化能力的人工鱼类群算法来改善初始集群中心的KFCM敏感性,并且易于进入局部极值,从而提高收敛速度并提高分类效果。葡萄酒和虹膜公共数据集的测试结果表明,AFSA-KFCM聚类算法优于聚类精度和时间效率的传统算法。同时,KDDCUP99实验数据的实验结果表明,该算法可以获得入侵检测中的理想检测率和假检测率。

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