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Network Intrusion Prediction Model based on RBF Features Classification

원문정보

초록

영어

According to the relationship between feature subset and parameters of RBF neural network, in order to improve the intrusion detection accuracy, it proposed an improved particle swarm optimization neural network of network intrusion detection model. Network feature subset and parameters of RBF neural network were regarded as a particle, through collaboration and information exchange between particles to find the optimal feature subset and parameters of RBF neural network, so as to establish the optimal network intrusion detection model, and using KDD Cup 99 data sets to carry out simulation experiment. The simulation results showed that, IPSO-RBF neural network reduced the feature dimensions, and the better parameters of RBF neural network was obtained then, which is a kind of network intrusion detection model with high detection accuracy and high speed.

목차

Abstract
 1. Introduction
 2. Feature Selection and RBF Neural Network Parameter Optimization
  2.1. Feature Selection Optimization Problem
  2.2. RBF Neural Network Parameter Optimization Problem
  2.3. Joint Optimization of Feature Selection and RBF Neural Network Parameter
 3. Intrusion Detection Model of IPSO-RBF Neural Network
  3.1. Improve Particle Swarm Optimization Algorithm (The Expression of Formula(7) is Error)
  3.2. Network Intrusion detection procedure of IPSO-RBF Neural Network
 4. Simulation Experiment
  4.1. Data Sources
  4.2. Comparison Model and Evaluation Index
  4.3. Pre-Processing of the Data
  4.4. Results and Analysis
 5. Conclusion
 Acknowledgements
 References

저자정보

  • Wang Xing-zhu Furong College Hunan University of Arts and Science Hunan Changde, 415000, China

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