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Network Intrusion Detection Based on Hybrid Fuzzy C-Mean Clustering

机译:基于混合模糊C均值聚类的网络入侵检测

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摘要

Intrusion of network which couldn't be analyzed, detected and prevented may make whole network system paralyze while the abnormally detection can prevent it by detecting the known and unknown character of data. A mixed fuzzy clustering algorithm that uses Quantum-behaved Particle Swarm Optimization (QPSO) algorithm and combines with Fuzzy C-means (FCM) is adopted in this paper and used in abnormally detection. The iteration algorithm is replaced by the new hybrid algorithm based on the gradient descent of FCM, which makes the algorithm a strong global searching capacity and avoids the local minimum problems of FCM. At the same time, FCM is no longer in a large degree dependent on the initialization values. The simulation result proves that compared with FCM the new algorithm not only has the favorable convergent capability of the global optimizing but also has been obviously improved the robustness, and has the higher performance in intrusion detection than FCM and K-means algorithm.
机译:无法分析,检测和防止网络的侵入可能使整个网络系统瘫痪,而异常检测可以通过检测数据的已知和未知特征来防止它。本文采用了一种使用量子表现粒子群优化(QPSO)算法的混合模拟聚类算法,并与模糊C型(FCM)结合,并在异常检测中使用。迭代算法基于FCM梯度下降的新混合算法代替,这使得算法强大的全局搜索能力,避免了FCM的局部最小问题。同时,FCM不再在大程度上依赖于初始化值。仿真结果证明,与FCM相比,新算法不仅具有全局优化的有利收敛能力,而且已经显着提高了鲁棒性,并且在入侵检测方面具有比FCM和K均值算法更高的性能。

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