Open Access
Open access
Facta universitatis - series Electronics and Energetics, volume 35, issue 2, pages 269-282

Wk-fnn design for detection of anomalies in the computer network traffic

Danijela Protic 1
Miomir Stankovic 2
Vladimir Antic 1
1
 
Center for Applied Mathematics and Electronics, Belgrade, Serbia
2
 
Mathematical Institute of SASA, Belgrade, Serbia
Publication typeJournal Article
Publication date2022-07-06
SJR
CiteScore
Impact factor0.6
ISSN03533670, 22175997
General Materials Science
Abstract

Anomaly-based intrusion detection systems identify abnormal computer network traffic based on deviations from the derived statistical model that describes the normal network behavior. The basic problem with anomaly detection is deciding what is considered normal. Supervised machine learning can be viewed as binary classification, since models are trained and tested on a data set containing a binary label to detect anomalies. Weighted k-Nearest Neighbor and Feedforward Neural Network are high-precision classifiers for decision-making. However, their decisions sometimes differ. In this paper, we present a WK-FNN hybrid model for the detection of the opposite decisions. It is shown that results can be improved with the xor bitwise operation. The sum of the binary ?ones? is used to decide whether additional alerts are activated or not.

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