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Machine learning / Artificial intelligence / Learning / Cybernetics / Dimension reduction / Cognition / Model selection / Feature detection / NetFlow / Training /  test /  and validation sets / Support vector machine / Feature selection
Date: 2017-08-25 13:31:01
Machine learning
Artificial intelligence
Learning
Cybernetics
Dimension reduction
Cognition
Model selection
Feature detection
NetFlow
Training
test
and validation sets
Support vector machine
Feature selection

Inductive Intrusion Detection in Flow-Based Network Data using One-Class Support Vector Machines Philipp Winter

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