A Mixed Unsupervised Clustering-Based Intrusion Detection Model

Cuixiao Zhang, Guobing Zhang, Shanshan Sun
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引用次数: 36

Abstract

Through analyzing the advantages and disadvantages between anomaly detection and misuse detection, a mixed intrusion detection system (IDS) model is designed. First, data is examined by the misuse detection module, then abnormal data detection is examined by anomaly detection module. In this model, the anomaly detection module is built using unsupervised clustering method, and the algorithm is an improved algorithm of K-means clustering algorithm and it is proved to have high detection rate in the anomaly detection module.
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基于混合无监督聚类的入侵检测模型
通过分析异常检测和误用检测的优缺点,设计了一种混合入侵检测系统模型。首先通过误用检测模块对数据进行检测,然后通过异常检测模块对异常数据进行检测。在该模型中,采用无监督聚类方法构建异常检测模块,该算法是k均值聚类算法的改进算法,在异常检测模块中被证明具有较高的检测率。
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