An Integrated Perceptron Kernel Classifier for Intrusion Detection System

  title={An Integrated Perceptron Kernel Classifier for Intrusion Detection System},
  author={Ruby Sharma and Sandeep Chaurasia},
  journal={International Journal of Computer Network and Information Security},
Because of the tremendous growth in the network based services as well as the sharing of sensitive data, the network security becomes a challenging task. The major risk in the network is the intrusion. Among various hardening system, intrusion detection system (IDS) plays a significant role in providing network security. Several traditional techniques are utilized for network security but still they lack in providing security. The major drawbacks of these network security algorithms are… 
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