Journal of Information Security

Volume 9, Issue 1 (January 2018)

ISSN Print: 2153-1234   ISSN Online: 2153-1242

Google-based Impact Factor: 3.79  Citations  

On the Use of k-NN in Anomaly Detection

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DOI: 10.4236/jis.2018.91006    1,304 Downloads   5,987 Views  Citations

Affiliation(s)

ABSTRACT

In this paper, we describe an algorithm that uses the k-NN technology to help detect threatening behavior in a computer network or a cloud. The k-NN technology is very simple and yet very powerful. It has several disadvantages and if they are removed the k-NN can be an asset to detect malicious behavior.

Share and Cite:

Tsigkritis, T. , Groumas, G. and Schneider, M. (2018) On the Use of k-NN in Anomaly Detection. Journal of Information Security, 9, 70-84. doi: 10.4236/jis.2018.91006.

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