Difference between revisions of "Survey of results in IDS literature"

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** Provides an in-depth analysis of traditional metrics.
** Provides an in-depth analysis of traditional metrics.
** A ratio between the input and output to the entropy of the input
** A ratio between the input and output to the entropy of the input
* [http://www.springerlink.com/content/y5454637051v1t21/ Conceptual Analysis of Intrusion Alarms] - 2005 (n/a)
* [http://www.springerlink.com.proxy.library.carleton.ca/content/y5454637051v1t21/fulltext.pdf Conceptual Analysis of Intrusion Alarms] - 2005 (n/a)
** Models alarm correlation techniques as an information retrieval problem.
** Models alarm correlation techniques as an information retrieval problem.



Revision as of 09:51, 7 March 2011

Formatted as Title - Year (# of Citations - # of self Citations)

Intrusion Detection Evaluation:

Identifying and Reducing False Alarms:

  • Intrusion detection alarms reduction using root cause analysis and clustering - 2009 (n/a)
  • Identifying false alarm for network intrusion detection system using data mining and decision tree - 2008 (n/a)
  • A memory-based learning approach to reduce false alarms in intrusion detection - 2005 (n/a)
  • An improved technique for reducing false alarms due to soft errors - 2006 (1-1)
  • False positives reduction via intrusion alert quality framework - 2005 (n/a)
  • Minimizing False Alarms on Intrusion Detection for Wireless Sensor Networks in Realistic Environments - 2008 (n/a)
  • A use of Bayes' theorem for insight of false alarm rates - 2007 (n/a)
  • The Problem of False Alarms: Evaluation with Snort and DARPA 1999 Dataset - 2008 (n/a)

Machine Learning Approaches:

  • Detecting Web-Based Attacks by Machine Learning - 2009 (n/a)
  • Semi-supervised Learning for False Alarm Reduction - 2010 (n/a)

Others:

  • An adaptive automatically tuning intrusion detection system - 2008 (n/a)
  • Design of multiple-level hybrid classifier for intrusion detection system using Bayesian clustering and decision trees - 2008 (n/a)