HURRA! Human readable router anomaly detection
- URL: http://arxiv.org/abs/2107.11078v1
- Date: Fri, 23 Jul 2021 08:38:29 GMT
- Title: HURRA! Human readable router anomaly detection
- Authors: Jose M. Navarro, Dario Rossi
- Abstract summary: HURRA aims to reduce the time spent by human operators in the process of network troubleshooting.
It comprises two modules that are plugged after any anomaly detection algorithm.
- Score: 11.564082628014638
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents HURRA, a system that aims to reduce the time spent by
human operators in the process of network troubleshooting. To do so, it
comprises two modules that are plugged after any anomaly detection algorithm:
(i) a first attention mechanism, that ranks the present features in terms of
their relation with the anomaly and (ii) a second module able to incorporates
previous expert knowledge seamlessly, without any need of human interaction nor
decisions. We show the efficacy of these simple processes on a collection of
real router datasets obtained from tens of ISPs which exhibit a rich variety of
anomalies and very heterogeneous set of KPIs, on which we gather manually
annotated ground truth by the operator solving the troubleshooting ticket. Our
experimental evaluation shows that (i) the proposed system is effective in
achieving high levels of agreement with the expert, that (ii) even a simple
statistical approach is able to extracting useful information from expert
knowledge gained in past cases to further improve performance and finally that
(iii) the main difficulty in live deployment concerns the automated selection
of the anomaly detection algorithm and the tuning of its hyper-parameters.
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