Traffic prediction has proven to be useful for several network management domains and represents one of the main enablers for instilling intelligence within future networks. Recent solutions have focused on predicting the behavior of traffic aggregates. Nonetheless, minimal attempts have tackled the prediction of mobile network traffic generated by different video application categories. To this end, in this work we apply Multi-task Deep Learning to predict network traffic aggregates generated by mobile video applications over short-term time scales. We investigate our approach leveraging state-of-art prediction models such as Convolutional Neural Networks, Gated Recurrent Unit, and Random Forest Regressor, showing some surprising results (e.g. NRMSE < 0.075 for upstream packet count prediction while NRMSE < 0.15 for the downstream counterpart), including some variability in prediction performance among the examined video application categories. Furthermore, we show that using smaller time intervals when predicting traffic aggregates may achieve better performances for specific traffic profiles.

Prediction of Mobile-App Network-Video-Traffic Aggregates using Multi-task Deep Learning / Pappone, L.; Cerasuolo, F.; Persico, V.; Ciuonzo, D.; Pescape, Antonio; Esposito, F.. - (2022), pp. 1-6. (Intervento presentato al convegno 2022 IFIP Networking Conference, IFIP Networking 2022 tenutosi a ita nel 2022) [10.23919/IFIPNetworking55013.2022.9829800].

Prediction of Mobile-App Network-Video-Traffic Aggregates using Multi-task Deep Learning

Cerasuolo F.;Persico V.;Ciuonzo D.;Pescape Antonio;
2022

Abstract

Traffic prediction has proven to be useful for several network management domains and represents one of the main enablers for instilling intelligence within future networks. Recent solutions have focused on predicting the behavior of traffic aggregates. Nonetheless, minimal attempts have tackled the prediction of mobile network traffic generated by different video application categories. To this end, in this work we apply Multi-task Deep Learning to predict network traffic aggregates generated by mobile video applications over short-term time scales. We investigate our approach leveraging state-of-art prediction models such as Convolutional Neural Networks, Gated Recurrent Unit, and Random Forest Regressor, showing some surprising results (e.g. NRMSE < 0.075 for upstream packet count prediction while NRMSE < 0.15 for the downstream counterpart), including some variability in prediction performance among the examined video application categories. Furthermore, we show that using smaller time intervals when predicting traffic aggregates may achieve better performances for specific traffic profiles.
2022
978-3-903176-48-5
Prediction of Mobile-App Network-Video-Traffic Aggregates using Multi-task Deep Learning / Pappone, L.; Cerasuolo, F.; Persico, V.; Ciuonzo, D.; Pescape, Antonio; Esposito, F.. - (2022), pp. 1-6. (Intervento presentato al convegno 2022 IFIP Networking Conference, IFIP Networking 2022 tenutosi a ita nel 2022) [10.23919/IFIPNetworking55013.2022.9829800].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/904837
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