2020
DOI: 10.1109/mwc.001.1900370
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Federated-Learning-Enabled Intelligent Fog Radio Access Networks: Fundamental Theory, Key Techniques, and Future Trends

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Cited by 110 publications
(43 citation statements)
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“…Determine EE-optimal and SE-optimal resource allocations, denoted by, (P SE , Q SE , a SE , b SE ) and (P EE , Q EE , a EE , b EE ), respectively, by using Algorithm 1 and Algorithm 2. 2: Initialize: (1)…”
Section: A Near-optimal Algorithm Designmentioning
confidence: 99%
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“…Determine EE-optimal and SE-optimal resource allocations, denoted by, (P SE , Q SE , a SE , b SE ) and (P EE , Q EE , a EE , b EE ), respectively, by using Algorithm 1 and Algorithm 2. 2: Initialize: (1)…”
Section: A Near-optimal Algorithm Designmentioning
confidence: 99%
“…Accordingly, by taking linear combination of the two consecutive points of F, we obtain F (1) as a new set of weakly Pareto optimal solutions to P0 where |F (1) | − |F| = N F − 1. In this way, the set of achievable weakly Pareto optimal solutions can be evolved as F → F (1) → F (2) → • • • → F (f inal) . In the aforementioned sequence, the number of weakly Pareto optimal solutions is increased at each evolution.…”
Section: Appendix Gmentioning
confidence: 99%
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“…The deep reinforcement learning has also been applied to realize network slicing in F-RAN in [17], where computing, caching and radio resources are orchestrated to meet the performance requirements of two different types of services: hot-spot and vehicle-to-infrastructure (V2I). To address the challenges of high cost of data offloading and model training for implementing network intelligence at the edge, an evolved architecture of F-RAN is proposed in [18], which employs federated learning (a.k.a. collaborative learning) to realize intelligent signal processing and network management with less communication overhead and greater efficiency than existing centralized learning paradigms.…”
Section: Related Workmentioning
confidence: 99%
“…Leveraging distributed signal processing, resource allocation, and popular content caching at the network edge, fog-radio access network (F-RAN) presents a revolutionary paradigm to alleviate burden over fronthaul network in the beyond 5G architecture [1]. In a multi-level edgecaching (EC) enabled system, the content distribution phase is significantly important to ensure throughput and diverse latency requirements of the end-users.…”
Section: Introductionmentioning
confidence: 99%