A Novel Method for Intrusion Detection Based on SARSA and Radial Bias Feed Forward Network (RBFFN)

Authors

  • Anshul Chaturvedi LNCT, Bhopal
  • Prof. Vineet Richharia LNCT, Bhopal

DOI:

https://doi.org/10.24297/ijct.v7i3.3444

Keywords:

Intrusion detection, SARSA, SARSA-RBF, KDD CUP 99

Abstract

The Internet, computer networks and information are vital resources of current information trend and their protection has increased importance in current existence. Any attempt, successful or unsuccessful to finding the middle ground the discretion, truthfulness and accessibility of any information resource or the information itself is measured a security attack or an intrusion. Intrusion compromised a loose of information credential and trust of security concern. The mechanism of intrusion detection faced a problem of new generated schema and pattern of attack data. Various authors and researchers proposed a method for intrusion detection based on machine learning approach and neural network approach all these compromised with new pattern and schema. Now in this paper a new model of intrusion detection based on SARAS reinforced learning scheme and RBF neural network has proposed. SARAS method imposed a state of attack behaviour and RBF neural network process for training pattern for new schema. Our empirical result shows that the proposed model is better in compression of SARSA and other machine learning technique.

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Author Biographies

Anshul Chaturvedi, LNCT, Bhopal

Reseach Scholar, Department of Computer Science & Engg.

Prof. Vineet Richharia, LNCT, Bhopal

Head of the Department of Computer Science & Engg.

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Published

2013-06-10

How to Cite

Chaturvedi, A., & Richharia, P. V. (2013). A Novel Method for Intrusion Detection Based on SARSA and Radial Bias Feed Forward Network (RBFFN). INTERNATIONAL JOURNAL OF COMPUTERS &Amp; TECHNOLOGY, 7(3), 646–653. https://doi.org/10.24297/ijct.v7i3.3444

Issue

Section

Research Articles