2020
DOI: 10.1109/twc.2019.2946245
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Broadband Analog Aggregation for Low-Latency Federated Edge Learning

Abstract: To leverage rich data distributed at the network edge, a new machine-learning paradigm, called edge learning, has emerged where learning algorithms are deployed at the edge for providing intelligent services to mobile users.While computing speeds are advancing rapidly, the communication latency is becoming the bottleneck of fast edge learning. To address this issue, this work is focused on designing a low-latency multi-access scheme for edge learning. To this end, we consider a popular privacy-preserving frame… Show more

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Cited by 685 publications
(535 citation statements)
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References 32 publications
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“…The channel fading is mitigated at the receiver by using multiple antennas, where the fading diminishes as the number of antennas approaches infinity. In [13], [14], the authors considered transmissions over fading MAC, where each entry of the gradient vector is scheduled for transmission depending on the corresponding channel condition. They developed the federated edge learning (FEEL) algorithm, where each node updates the SGD estimate for multiple steps, and then communicates with the server for model aggregation.…”
Section: B Distributed Learning Over Macmentioning
confidence: 99%
“…The channel fading is mitigated at the receiver by using multiple antennas, where the fading diminishes as the number of antennas approaches infinity. In [13], [14], the authors considered transmissions over fading MAC, where each entry of the gradient vector is scheduled for transmission depending on the corresponding channel condition. They developed the federated edge learning (FEEL) algorithm, where each node updates the SGD estimate for multiple steps, and then communicates with the server for model aggregation.…”
Section: B Distributed Learning Over Macmentioning
confidence: 99%
“…is defined as (10). The PS scales the received signal (2) by the factor (11) and multiplies it by R T ρ /ρ to obtain an estimate of K k=1 v k i .…”
Section: Uplink Analog Transmissionmentioning
confidence: 99%
“…Recognizing such criticality, a host of studies have been carried out and resulted in various scheduling protocols for FL, ranging from minimizing the transmission latency [13], maximizing the spectral utility [14], to opportunistically alternating between selecting the UEs with advantageous and disadvantageous channel conditions [15]. Even though positive gains have been demonstrated, these works put the main focus on exploiting the spectral resources so as to maximize the number of updates collectible by the AP in each round of global communication but ignore the staleness of these updates.…”
Section: Introductionmentioning
confidence: 99%