An Anomaly Intrusion Detection Algorithm Based on Minimal Diversity Semi-supervised Clustering

Juan Wang, Ke Zhang, Da-sen Ren
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引用次数: 4

Abstract

An anomaly intrusion detection algorithm based on minimal diversity is proposed. It can deal with mixed attributes, so overcomes the deficiencies of most unsupervised learning methods. Based on the minimal diversity measurement, we use a small amount of marked data to guide clustering. When detecting new records, we calculate its diversity from the existing clusters to determine its category. This algorithm can detect known and unknown types of attacks, and update detection model automatically. The simulative experiment indicates that the new algorithm improves the performance of detecting attacks, and it is more effective than K-means intrusion detection method.
一种基于最小多样性半监督聚类的异常入侵检测算法
提出了一种基于最小多样性的异常入侵检测算法。它可以处理混合属性,克服了大多数无监督学习方法的不足。基于最小多样性度量,我们使用少量标记数据来指导聚类。当检测到新记录时,我们从现有的簇中计算它的多样性来确定它的类别。该算法可以检测已知和未知的攻击类型,并自动更新检测模型。仿真实验表明,新算法提高了检测攻击的性能,比k均值入侵检测方法更有效。
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