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A fuzzy measure for intrusion and anomaly detection

机译:入侵和异常检测的模糊度量

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Finding intrusion and anomalies in networks is a problem of wide research interest both from academia and software industry. This work has three contributions. The first contribution is a dissimilarity measure for intrusion detection. The dissimilarity measure is also applied to achieve evolutionary clustering and dimensionality reduction of system calls. Earlier works in evolutionary clustering used basic Gaussian membership function to incrementally cluster by randomly assuming the initial deviation. This work aims at achieving evolutionary clustering by defining the expression to choose, initial deviation by eliminating the need to assume the standard deviation. Finally classification may also be performed using the proposed dissimilarity measure.
机译:在学术界和软件行业中,发现网络中的入侵和异常现象都是引起广泛研究兴趣的问题。这项工作有三点贡献。第一个贡献是用于入侵检测的差异度量。相异性度量也可用于实现系统调用的进化聚类和降维。演化聚类的早期工作使用基本的高斯隶属函数通过随机假设初始偏差来逐步聚类。这项工作旨在通过定义要选择的表达式来实现进化聚类,通过消除假设标准差的需要来实现初始偏差。最后,也可以使用提出的相异性度量进行分类。

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