Litcius/Paper detail

Completion Time Minimization of Fog-RAN-Assisted Federated Learning With Rate-Splitting Transmission

Seok-Hwan Park, Hoon Lee

2022IEEE Transactions on Vehicular Technology16 citationsDOI

Abstract

This work studies federated learning (FL) over a fog radio access network, in which multiple internet-of-things (IoT) devices cooperatively learn a shared machine learning model by communicating with a cloud server (CS) through distributed access points (APs). Under the assumption that the fronthaul links connecting APs to CS have finite capacity, a rate-splitting transmission at IoT devices (IDs) is proposed which enables hybrid edge and cloud decoding of split uplink messages. The problem of completion time minimization for FL is tackled by optimizing the rate-splitting transmission and fronthaul quantization strategies along with training hyperparameters such as precision and iteration numbers. Numerical results show that the proposed rate-splitting transmission achieves notable gains over benchmark schemes which rely solely on edge or cloud decoding.

Topics & Concepts

Cloud computingComputer scienceDecoding methodsTelecommunications linkBenchmark (surveying)Enhanced Data Rates for GSM EvolutionTransmission (telecommunications)Edge deviceQuantization (signal processing)Edge computingMinificationComputer networkAlgorithmArtificial intelligenceTelecommunicationsGeodesyProgramming languageOperating systemGeographyPrivacy-Preserving Technologies in DataAdvanced MIMO Systems OptimizationAdvanced Wireless Communication Technologies
Completion Time Minimization of Fog-RAN-Assisted Federated Learning With Rate-Splitting Transmission | Litcius