Active Learning for Intrusion Detection
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- Active Learning for Intrusion Detection
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Intrusion Detection Using Disagreement-Based Semi-supervised Learning: Detection Enhancement and False Alarm Reduction
Cyberspace Safety and SecurityAbstractWith the development of intrusion detection systems (IDSs), a number of machine learning approaches have been applied to intrusion detection. For a traditional supervised learning algorithm, training examples with ground-truth labels should be ...
An active learning based TCM-KNN algorithm for supervised network intrusion detection
As network attacks have increased in number and severity over the past few years, intrusion detection is increasingly becoming a critical component of secure information systems and supervised network intrusion detection has been an active and difficult ...
Using Active Learning in Intrusion Detection
CSFW '04: Proceedings of the 17th IEEE workshop on Computer Security FoundationsIntrusion Detection Systems (IDSs) have become an importantpart of operational computer security. They are thelast line of defense against malicious hackers and help detectongoing attacks as well as mitigate their damage. However,intrusion detection ...
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IEEE Computer Society
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