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Anomaly Detection with Artificial Immune Network
引用本文:PENG Lingxi LI Tao LIU Xiaojie CHEN Yuefeng LIU Caiming LIU Sunjun. Anomaly Detection with Artificial Immune Network[J]. 武汉大学学报:自然科学英文版, 2007, 12(5): 951-954. DOI: 10.1007/s11859-007-0017-9
作者姓名:PENG Lingxi LI Tao LIU Xiaojie CHEN Yuefeng LIU Caiming LIU Sunjun
作者单位:[1]College of Computer Science, Sichuan University, Chengdu 610065, Sichuan, China [2]School of Information, Guangdong Ocean University, Zhanjiang 524025, Guangdong, China
基金项目:Supported by the National High Technology Research and Development Program of China(863 Program )( 2006AA01Z435 )and the National Natural Science Foundation of China (60573130, 60502011).
摘    要:Inspired by the immune network theory, an adaptive anomaly detection paradigm based on artificial immune network, referred as APAI, is proposed. The implementation of the paradigm includes: initially, the first is to create the initial antibody network; then, through the learning of each training antigen, the antibody network is evolved and updated by the optimal antibodies. Finally, anomaly detection process is accomplished by majority vote of the k nearest neighbor antibodies in the network. The experiments used the famous Sonar Benchmark dataset in our study, which is taken from the UCI machine learning database. The obtained detection accuracy of APAI was 97.7%, which was very promising with regard to the other classification applications in the literature for this problem. In addition to its nonlinear classification properties, APAI possesses biological immune network properties such as clonal selection, immune network, and immune memory, which can be applied to pattern recognition, classification, and etc.

关 键 词:人工免疫网络  异常检测  计算机  机器学习
文章编号:1007-1202(2007)05-0951-04
修稿时间:2007-01-23

Anomaly detection with artificial immune network
Peng Lingxi,Li Tao,Liu Xiaojie,Chen Yuefeng,Liu Caiming,Liu Sunjun. Anomaly detection with artificial immune network[J]. Wuhan University Journal of Natural Sciences, 2007, 12(5): 951-954. DOI: 10.1007/s11859-007-0017-9
Authors:Peng Lingxi  Li Tao  Liu Xiaojie  Chen Yuefeng  Liu Caiming  Liu Sunjun
Affiliation:(1) College of Computer Science, Sichuan University, Chengdu, 610065, Sichuan, China;(2) School of Information, Guangdong Ocean University, Zhanjiang, 524025, Guangdong, China
Abstract:Inspired by the immune network theory, an adaptive anomaly detection paradigm based on artificial immune network, referred as APAI, is proposed. The implementation of the paradigm includes: initially, the first is to create the initial antibody network; then, through the learning of each training antigen, the antibody network is evolved and updated by the optimal antibodies. Finally, anomaly detection process is accomplished by majority vote of the k nearest neighbor antibodies in the network. The experiments used the famous Sonar Benchmark dataset in our study, which is taken from the UCI machine learning database. The obtained detection accuracy of APAI was 97.7%, which was very promising with regard to the other classification applications in the literature for this problem. In addition to its nonlinear classification properties, APAI possesses biological immune network properties such as clonal selection, immune network, and immune memory, which can be applied to pattern recognition, classification, and etc. Biography: PENG Lingxi (1978–), male, Ph.D. candidate, Lecture of Guangdong Ocean University, research direction: artificial immune and network security.
Keywords:anomaly detection   artificial immune network   machine learning   classification
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