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Comprehensive Composition to Spot Intrusions by Optimized Gaussian Kernel SVM

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  • Kapil Kumar

    (NSUT East Campus, India)

Abstract

The intrusion interjects network devices and holds a switch of the network with the command which regulates the programmer and programmer govern the nasty code inoculated in the device for attaining intelligence about the devices. In this paper, the researchers organized the IDS framework by using machine learning algorithms like Linear SVM, RBF SVM, Sigmoid SVM, and Polynomial SVM to detect intrusions and estimate the performance of numerous algorithms for attaining the optimized algorithm. The researchers utilized the KDDCUP99 for equating the accuracy, precision, and recall of the algorithms, and for classifications, the researchers utilized the binary encoder tools. The performance analysis calculates that RBF SVM is the finest classifier amongst the other SVMs, and the prediction report predicts that Linear SVM results with 99.2% accuracy, Sigmoid SVM results with 99.7% accuracy, Polynomial SVM results with 99.5% accuracy, and RBF SVMs results with 99.99% accuracy.

Suggested Citation

  • Kapil Kumar, 2022. "Comprehensive Composition to Spot Intrusions by Optimized Gaussian Kernel SVM," International Journal of Knowledge-Based Organizations (IJKBO), IGI Global, vol. 12(1), pages 1-27, January.
  • Handle: RePEc:igg:jkbo00:v:12:y:2022:i:1:p:1-27
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