1st International ICST Workshop on Artificial Intelligence in Grid Computing

Research Article

Study of Intrusion Detection System Based on Improved BP Neural Networks

  • @INPROCEEDINGS{10.1145/1577389.1577394,
        author={Xiao-yan YANG and Kun GAO and Wei-gang ZHANG},
        title={Study of Intrusion Detection System Based on Improved BP Neural Networks},
        proceedings={1st International ICST Workshop on Artificial Intelligence in Grid Computing},
        publisher={ACM},
        proceedings_a={AIGC},
        year={2007},
        month={9},
        keywords={BP neural networks intrusion detection input vector simulation.Design Experimentation Security .},
        doi={10.1145/1577389.1577394}
    }
    
  • Xiao-yan YANG
    Kun GAO
    Wei-gang ZHANG
    Year: 2007
    Study of Intrusion Detection System Based on Improved BP Neural Networks
    AIGC
    ACM
    DOI: 10.1145/1577389.1577394
Xiao-yan YANG1,*, Kun GAO1, Wei-gang ZHANG1,*
  • 1: School of Computer Science and Information Technology, Zhejiang Wanli University Ningbo, Zhejiang 315100, P. R. China
*Contact email: yangxiaoyan@zwu.edu.cn, wgzhang@zwu.edu.cn

Abstract

Intrusion detection is one of the core technologies in dynamic security. As an important branch of artificial intelligence, neural networks is a high efficient and parallel, non-linear dynamical system, it possesses characteristics of self-adaptive, self- learning and well expansibility. Aimed at the traditional IDS defects of high rate of false alarm and high rate of missing report, we design the method of IDS based on BP neural networks. For huge data samples, the training of the value of the weight is improved compared with the traditional back-propagation (BP) neural networks and simulation, the results show that the method is efficient.