www.isi.ac

ISI Journals

[International Scientific Indexing]

[Institute for Scientific Information]

[P-ISSN: 2413-5100] & [E-ISSN: 2413-5119]

The relationship between cyber security and machine learning

Open PDF in Browser
International Journal of Basis Applied Science and Study, 2022

Autour(s)

  • Bing Pan, Lixuan Zhang, Chang Li, Lee Chen

Abstract

The application of machine learning (ML) technique in cyber- security is increasing than ever before. Starting from IP traffic classification, filtering malicious traffic for intrusion detection, ML is the one of the promising answers that can be effective against zero day threats. New research is being done by use of statistical traffic characteristics and ML techniques. This paper is a focused literature survey of machine learning and its application to cyber analytics for intrusion detection, traffic classification and applications such as email filtering. Based on the relevance and the number of citation each method were identified and summarized. Because datasets are an important part of the ML approaches some well know datasets are also mentioned. Some recommendations are also provided on when to use a given algorithm. An evaluation of four ML algorithms has been performed on MODBUS data collected from a gas pipeline. Various attacks have been classified using the ML algorithms and finally the performance of each algorithm have been assessed.

About ISI Journals: ISI Journals are devoted to the rapid worldwide dissemination of research and is composed of a number of specialized research networks.

Special thanks to:

[Science Direct, Elsevier, Springer, SAGE Publications, EBSCOHost, Oxford University Press, CRC Press, Cambridge University Press, Pearson Education, Wolters Kluwer, Cengage, McGraw Hill, Hodder & Stoughton, Macmillan Learning, Scholastic, IEEE Standards Association, Association for Computing Machinery, American National Standards Institute, American Society of Mechanical Engineers, NFPA, American Society of Civil Engineers, ASTM International, Brazilian National Standards Organization, Emerald, Taylor & Francis, Wiley, ProQuest, JSTOR, Springer Nature]

Powered by ISI Journals (International Scientific Indexing & Institute for Scientific Information)