基于无监督小生境聚类的异常检测及其在网络入侵检测中的应用

Elizabeth León Guzman, O. Nasraoui, Jonatan Gómez
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引用次数: 65

摘要

提出了一种基于无监督小生境聚类(UNC)的异常检测方法。UNC是一种能够处理噪声的聚类遗传小生境技术,能够自动确定聚类的数量。UNC使用正常样本生成正常空间(聚类)的轮廓。每个聚类随后可以用模糊隶属函数来表征,该函数遵循由进化的聚类中心和半径定义的高斯形状。为了确定数据样本的正常水平,使用最大或模糊运算符聚合成员关系集。在合成数据集和真实数据集上进行了实验,其中包括一个网络入侵检测数据集,并对一些结果进行了分析和报告。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection based on unsupervised niche clustering with application to network intrusion detection
We present a new approach to anomaly detection based on unsupervised niche clustering (UNC). The UNC is a genetic niching technique for clustering that can handle noise, and is able to determine the number of clusters automatically. The UNC uses the normal samples for generating a profile of the normal space (clusters). Each cluster can later be characterized by a fuzzy membership function that follows a Gaussian shape defined by the evolved cluster centers and radii. The set of memberships are aggregated using a max-or fuzzy operator in order to determine the normalcy level of a data sample. Experiments on synthetic and real data sets, including a network intrusion detection data set, are performed and some results are analyzed and reported.
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