Evaluation of a Multi-cell and Multi-tenant Capacity Sharing Solution under Heterogeneous Traffic Distributions
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Oriol Sallent | Jordi Pérez-Romero | Anna Umbert | Irene Vilà | A. Umbert | J. Pérez-Romero | O. Sallent | Irene Vilá
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