articleIEEE Communications Surveys & TutorialsOct 26, 2015Closed access

A Survey of Data Mining and Machine Learning Methods for Cyber Security Intrusion Detection

Johns Hopkins University Applied Physics Laboratory

Indexed incrossref

Abstract

This survey paper describes a focused literature survey of machine learning (ML) and data mining (DM) methods for cyber analytics in support of intrusion detection. Short tutorial descriptions of each ML/DM method are provided. Based on the number of citations or the relevance of an emerging method, papers representing each method were identified, read, and summarized. Because data are so important in ML/DM approaches, some well-known cyber data sets used in ML/DM are described. The complexity of ML/DM algorithms is addressed, discussion of challenges for using ML/DM for cyber security is presented, and some recommendations on when to use a given method are provided.

Citation impact

3,018
total citations
FWCI
105.86
Percentile
100%
References
134
Citations per year

Authors

2

Topics & keywords

Keywords
  • Computer science
  • Intrusion detection system
  • Data mining
  • Relevance (law)
  • Analytics
  • Intrusion
  • Data science
  • Machine learning
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