Big Data-driven Automated Anomaly Detection and Performance Forecasting in Mobile Networks
Jessica Moysen, Furqan Ahmed, Mario Garc\'ia-Lozano, Jarno Niemel\"a

TL;DR
This paper presents a novel machine learning framework that leverages diverse mobile network data to automate anomaly detection and performance forecasting, enhancing network management with intelligent insights.
Contribution
It introduces a new integrated framework combining multiple data sources and ML algorithms for anomaly detection and performance prediction in LTE networks.
Findings
Framework effectively detects spatial-temporal anomalies.
Accurately predicts customer impact on network performance.
Enhances traditional network management with intelligent monitoring.
Abstract
The massive amount of data available in operational mobile networks offers an invaluable opportunity for operators to detect and analyze possible anomalies and predict network performance. In particular, application of advanced machine learning (ML) techniques on data aggregated from multiple sources can lead to important insights, not only for the detection of anomalous behavior but also for performance forecasting, thereby complementing classic network operation and maintenance solutions with intelligent monitoring tools. In this paper, we propose a novel framework that aggregates diverse data sets (e.g. configuration, performance, inventory, locations, user speeds) from an operational LTE network and applies ML algorithms to diagnose network issues and analyze their impact on key performance indicators. To this end, pattern identification and time-series forecasting algorithms are…
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