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Classification of Anomalies in Telecommunication Network KPI Time Series

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Classification of Anomalies in Telecommunication Network KPI Time Series

Bordeau--Aubert, Korantin, Whatley, Justin, Nadeau, Sylvain, Glatard, Tristan and Jaumard, Brigitte (2023) Classification of Anomalies in Telecommunication Network KPI Time Series. Masters thesis, Concordia University.

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Abstract

The increasing complexity and scale of telecommunication networks have led to a growing interest in automated anomaly detection systems. However, the classification of anomalies detected on network Key Performance Indicators (KPI) has received less attention, resulting in a lack of information about anomaly characteristics and classification processes. To address this gap, this thesis proposes a modular anomaly classification framework. The framework assumes separate entities for the anomaly classifier and the detector, allowing for a distinct treatment of anomaly detection and classification tasks on time series. The objectives of this study are (1) to develop a time series simulator that generates synthetic time series resembling real-world network KPI behavior, (2) to build a detection model to identify anomalies in the time series, (3) to build classification models that accurately categorize detected anomalies into predefined classes (4) to evaluate the classification framework performance on simulated and real-world network KPI time series. This study has demonstrated the good performance of the anomaly classification models trained on simulated anomalies when applied to real-world network time series data.

Divisions:Concordia University > Gina Cody School of Engineering and Computer Science > Computer Science and Software Engineering
Item Type:Thesis (Masters)
Authors:Bordeau--Aubert, Korantin and Whatley, Justin and Nadeau, Sylvain and Glatard, Tristan and Jaumard, Brigitte
Institution:Concordia University
Degree Name:M. Comp. Sc.
Program:Computer Science
Date:29 August 2023
Thesis Supervisor(s):Glatard, Tristan and Jaumard, Brigitte
ID Code:992985
Deposited By: Korantin Bordeau-Aubert
Deposited On:04 Jun 2024 15:03
Last Modified:04 Jun 2024 15:03
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