Network operators are interested in continuously monitoring the satisfaction of their customers to minimise the churn rate: however, collecting user feedbacks through surveys is a cumbersome task. In this work we explore the possibility of predicting the long-term user satisfaction relative to network coverage and video streaming starting from user-side network measurements only. We leverage country-wide datasets to engineer features which are then used to train several machine learning models. The obtained results suggest that, although some correlation is visible and could be exploited by the classifiers, long-term user satisfaction prediction from network measurements is a very challenging task: we therefore point out possible action points to be implemented to improve the prediction results.

(2019). Towards Long-Term Coverage and Video Users Satisfaction Prediction in Cellular Networks . Retrieved from https://hdl.handle.net/10446/263889

Towards Long-Term Coverage and Video Users Satisfaction Prediction in Cellular Networks

Pimpinella, A.;
2019-01-01

Abstract

Network operators are interested in continuously monitoring the satisfaction of their customers to minimise the churn rate: however, collecting user feedbacks through surveys is a cumbersome task. In this work we explore the possibility of predicting the long-term user satisfaction relative to network coverage and video streaming starting from user-side network measurements only. We leverage country-wide datasets to engineer features which are then used to train several machine learning models. The obtained results suggest that, although some correlation is visible and could be exploited by the classifiers, long-term user satisfaction prediction from network measurements is a very challenging task: we therefore point out possible action points to be implemented to improve the prediction results.
2019
Pimpinella, Andrea; Redondi, A. E. C.; Galimberti, I.; Foglia, F.; Venturini, L.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/263889
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