Anomaly detection from telecommunication data using three-way analysis
Anomaly detection from telecommunication data using three-way analysis
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Date
2012
Authors
Márcia Barbosa Oliveira
João Gama
Hadi Fanaee Tork
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Abstract
So far, several supervised and unsupervised solutions have been provided for detecting
failures in telecommunication networks. Among them, unsupervised approaches attracted more
attention since no labeled data is required. Principal component analysis (PCA) is a wellknown
unsupervised technique to solve this type of problem when data is organized in matrix
form. However, PCA may fail to capture all the significant interactions established among di erent
dimensions when applied to higher-order data. When dealing with three, instead of two dimensions,
three-way factorization methods are more suitable since they are able to explicitly take into account
the interactions among the three dimensions, without collapsing the raw data. Since an important
property of telecommunication data is its temporal-sequential nature, the temporal dimension
should be considered along with the other two dimensions in order to gain insights regarding its
evolution. The aim of this paper is to demonstrate t