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On the Training Time of Machine Learners for Automatic Classification in Multi-Level Security Systems

  • Engelstad, Paal E. (Department of Computer Science, University of Oslo)
  • Received : 2016.02.08
  • Accepted : 2016.02.22
  • Published : 2016.02.29

Abstract

This paper investigates the importance of the computational overhead when machine learning methods, such as SVM, LASSO, AdaBoosting and AdaBagging, are used for automatic security classification.

Keywords

References

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