Probabilistic Inference for Network Management

نویسندگان

  • Jianguo Ding
  • Bernd J. Krämer
  • Yingcai Bai
  • Hansheng Chen
چکیده

As networks grow in size, heterogeneity, and complexity of applications and network services, an efficient network management system needs to work effectively even in face of incomplete management information, uncertain situations and dynamic changes. We use Bayesian networks to model the network management and consider the probabilistic backward inference between the managed entities, which can track the strongest causes and trace the strongest routes between particular effects and its causes. This is the foundation for further intelligent decision of management in networks.

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تاریخ انتشار 2004