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一种基于仿射传播聚类的入侵检测方法
引用本文:程梦驹,赵龙,陶洪波,赵成林.一种基于仿射传播聚类的入侵检测方法[J].无线电工程,2013(11):4-7.
作者姓名:程梦驹  赵龙  陶洪波  赵成林
作者单位:北京邮电大学信息与通信工程学院,北京100876
基金项目:国家自然科学基金资助项目(61271180); 国家重大科技专项资助项目(2012ZX03001022); 国家物联网专项基金资助项目(物联网无线频谱及通信安全测试服务平台)
摘    要:针对基于无监督聚类的入侵检测需要预先指定初始聚类中心和数目的问题,提出了一种基于仿射传播聚类的入侵检测方法,采用了仿射传播聚类实现入侵检测,将每个数据点都看作潜在的聚类中心,通过信息迭代更新自动决定最后的聚类中心和数目,能够获得准确的聚类结果。在对KDD CUP99数据集的仿真实验中验证了方法的可行性,实验结果表明,相比传统方法能有效提高检测率。

关 键 词:入侵检测  异常检测  数据挖掘  无监督聚类  仿射传播聚类

An Intrusion Detection Approach Based on Affinity Propagation Clustering
CHENG Meng-ju,ZHAO Long,TAO Hong-bo,ZHAO Cheng-lin.An Intrusion Detection Approach Based on Affinity Propagation Clustering[J].Radio Engineering of China,2013(11):4-7.
Authors:CHENG Meng-ju  ZHAO Long  TAO Hong-bo  ZHAO Cheng-lin
Affiliation:(School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing 100876, China)
Abstract:In order to address the issue in intrusion detection approaches based on unsupervised clustering that clustering centers and number have to be pre-defined,this paper proposes an intrusion detection approach based on affinity propagation clustering. This approach regards each data point as potential clustering center to equally and automatically determine final clustering centers and num- ber by updating messages exchanged between data points, and can obtain accurate clustering result. The proposed approach is proved to be feasible by the experiment implemented on KDD CUP99 dataset, and the result of experiment shows that this approach can effectively improve detection rate comparing to traditional clustering approaches.
Keywords:intrusion detection  anomaly detection  data mining  unsupervised clustering  affinity propagation clustering
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