Title
Event and Anomaly Detection Using Tucker3 Decomposition.
Abstract
Failure detection in telecommunication networks is a vital task. So far, several supervised and unsupervised solutions have been provided for discovering failures in such networks. Among them unsupervised approaches has attracted more attention since no label data is required. Often, network devices are not able to provide information about the type of failure. In such cases the type of failure is not known in advance and the unsupervised setting is more appropriate for diagnosis. Among unsupervised approaches, Principal Component Analysis (PCA) is a well-known solution which has been widely used in the anomaly detection literature and can be applied to matrix data (e.g. Users-Features). However, one of the important properties of network data is their temporal sequential nature. So considering the interaction of dimensions over a third dimension, such as time, may provide us better insights into the nature of network failures. In this paper we demonstrate the power of three-way analysis to detect events and anomalies in time-evolving network data.
Year
Venue
Field
2014
CoRR
Data mining,Anomaly detection,Matrix (mathematics),Computer science,Networking hardware,Network data,Artificial intelligence,Machine learning,Principal component analysis
DocType
Volume
ISSN
Journal
abs/1406.3266
In Proceedings of 20th European Conference on Artificial Intelligence (ECAI'2013)- Ubiquitous Data Mining Workshop, pp. 8-12, vol. 1, August 27-31, 2012
Citations 
PageRank 
References 
2
0.38
2
Authors
5
Name
Order
Citations
PageRank
Hadi Fanaee-T1758.55
Márcia D. B. Oliveira262.24
João Gama3286.37
Simon Malinowski4232.13
Ricardo Morla510319.10