Research on the semi-supervised fuzzy clustering algorithm with pariwise constraints for intrusion detection

Feng Guorui
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引用次数: 3

Abstract

Traditional FCM algorithm has the problems of sensitivity to initialization, local optimal and the Euclidean distance is only applied to handle the dataset of spatial data structure for the super-ball. Hence a semi-supervised Fuzzy C-Means algorithm based on pairwise constraints for the intrusion detection is proposed. The pairwise constraints can be used to improve the learning ability of the algorithm and the detection rate. The KDDCUP99 data sets were selected as the experimental object. The experiment result proves that the detection rate and the false rate can be more efficiently improved by the semi-supervised FCM clustering algorithm than the traditional FCM algorithm.
基于局部约束的半监督模糊聚类入侵检测算法研究
传统的FCM算法存在初始化敏感、局部最优和欧氏距离仅用于处理超级球的空间数据结构数据集等问题。在此基础上,提出了一种基于成对约束的半监督模糊c均值入侵检测算法。利用配对约束可以提高算法的学习能力和检测率。选择KDDCUP99数据集作为实验对象。实验结果表明,与传统的FCM算法相比,半监督FCM聚类算法可以更有效地提高检测率和错误率。
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