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Adaptive proportional fair parameterization based LTE scheduling using continuous actor critic reinforcement learning

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Figure

Fig.6. JFI –Mean user throughput tradeoff
Fig. 7 Percentage of TTIs when the scheduler seats on the UF/FEA/OF states regions

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