The ability to forecast Quality of Experience (QoE) metrics will be crucial in several applications and services offered by the future B5G/6G networks. However, QoE timeseries forecasting has not been adequately investigated so far, mainly due to the lack of available realistic datasets. In this paper, we first present a novel QoE forecasting dataset obtained from realistic 5G network simulations and characterized by Quality of Service (QoS) and QoE metrics for a video-streaming application; then, we embrace the topical challenge of trustworthiness in the adoption of AI systems for tackling the QoE prediction task. We show how an eXplainable Artificial Intelligence (XAI) model, namely Decision Tree, can be effectively leveraged for addressing the forecasting problem. Finally, we identify federated learning as a suitable paradigm for privacy-preserving collaborative model training and outline the related challenges from both an algorithmic and 6G network support perspective.

Towards Trustworthy AI for QoE prediction in B5G/6G Networks / Luis Corcuera Bárcena, J., Ducange, P., Marcelloni, F., Nardini, G., Noferi, A., Renda, A., Stea, G., Virdis, A.. - ELETTRONICO. - 3189:(2022), pp. 1-9. (First International Workshop on Artificial Intelligence in Beyond 5G and 6G Wireless Networks (AI6G 2022) Padova (Italy) 18-23 July 2022).

Towards Trustworthy AI for QoE prediction in B5G/6G Networks

Alessandro Renda;
2022-01-01

Abstract

The ability to forecast Quality of Experience (QoE) metrics will be crucial in several applications and services offered by the future B5G/6G networks. However, QoE timeseries forecasting has not been adequately investigated so far, mainly due to the lack of available realistic datasets. In this paper, we first present a novel QoE forecasting dataset obtained from realistic 5G network simulations and characterized by Quality of Service (QoS) and QoE metrics for a video-streaming application; then, we embrace the topical challenge of trustworthiness in the adoption of AI systems for tackling the QoE prediction task. We show how an eXplainable Artificial Intelligence (XAI) model, namely Decision Tree, can be effectively leveraged for addressing the forecasting problem. Finally, we identify federated learning as a suitable paradigm for privacy-preserving collaborative model training and outline the related challenges from both an algorithmic and 6G network support perspective.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11368/3120400
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