Joint Clustering and Prediction of the Quality of Service in Vehicular Cellular Networks
Oscar Stenhammar, G\'abor Fodor, Carlo Fischione

TL;DR
This paper introduces a distributed clustering and prediction framework for QoS in vehicular cellular networks, effectively handling concept drift and reducing prediction errors.
Contribution
It presents a novel distributed optimization approach that jointly clusters cells and trains predictive models, improving accuracy and scalability under network dynamics.
Findings
The method converges and adapts to network changes.
It reduces mean absolute error by 9-27% compared to existing models.
It effectively captures local variability with fewer models.
Abstract
Machine learning models are increasingly deployed in wireless networks with stringent performance requirements. However, dynamic propagation environments and fluctuating traffic densities introduce concept drift, which complicates the ability to maintain accurate predictive machine learning models. We propose a distributed optimization framework that jointly clusters cells and trains cluster-level predictive models, enabling nodes to cooperatively predict quality of service (QoS) distributions under communication constraints. The proposed method models QoS as a multivariate Gaussian/lognormal distribution and uses a novel clustering mechanism that groups cells with similar network conditions, allowing each cell to select the most appropriate predictor without retraining new models for each cell. By leveraging block coordinate descent, our solution efficiently clusters the cells and…
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