Enrico Lovisotto, E. Vianello, Davide Cazzaro, Michele Polese, Federico Chiariotti, Daniel Zucchetto, A. Zanella, M. Zorzi
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Cell traffic prediction using joint spatio-temporal information
In future cellular networks, the ability to predict network parameters such as cell load will be a key enabler of several proposed adaptation and resource allocation techniques. In this study, we consider a joint exploitation of spatio-temporal data to improve the prediction accuracy of standard regression methods. We test several such methods from the literature on a publicly available dataset and document the advantages of the proposed approach.