Title :
Online Anomaly Detection Using KDE
Author_Institution :
Dept. of Comput. Sci. & Eng., BRAC Univ., Dhaka, Bangladesh
Abstract :
Large backbone networks are regularly affected by a range of anomalies. This paper presents an online anomaly detection algorithm based on Kernel Density Estimates. The proposed algorithm sequentially and adaptively learns the definition of normality in the given application, assumes no prior knowledge regarding the underlying distributions, and then detects anomalies subject to a user-set tolerance level for false alarms. Comparison with the existing methods of Geometric Entropy Minimization, Principal Component Analysis and OneClass Neighbor Machine demonstrates that the proposed method achieves superior performance with lower complexity.
Keywords :
Internet; operating system kernels; principal component analysis; KDE; backbone networks; geometric entropy minimization; kernel density estimation; lower complexity; oneclass neighbor machine; online anomaly detection; principal component analysis; user set tolerance level; Application software; Computer science; Detection algorithms; Entropy; High-speed networks; Kernel; Machine learning algorithms; Minimization methods; Principal component analysis; Spine;
Conference_Titel :
Global Telecommunications Conference, 2009. GLOBECOM 2009. IEEE
Conference_Location :
Honolulu, HI
Print_ISBN :
978-1-4244-4148-8
DOI :
10.1109/GLOCOM.2009.5425504