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Federated Edge Learning with Misaligned Over-The-Air Computation

Contributo in Atti di convegno
Data di Pubblicazione:
2021
Citazione:
Federated Edge Learning with Misaligned Over-The-Air Computation / Shao, Y.; Gunduz, D.; Liew, S. C.. - 2021-:(2021), pp. 236-240. ( 22nd IEEE International Workshop on Signal Processing Advances in Wireless Communications, SPAWC 2021 ita 2021) [10.1109/SPAWC51858.2021.9593155].
Abstract:
Over-the-air computation (OAC) is a promising technique to realize fast model aggregation in the uplink of federated edge learning (FEEL). OAC, however, hinges on accurate channel-gain precoding and strict synchronization among edge devices, which are challenging in practice. As such, how to design the maximum likelihood (ML) estimator in the presence of residual channel-gain mismatch and asynchronies is an open problem. To fill this gap, this paper formulates the problem of misaligned OAC for FEEL and puts forth a whitened matched filtering and sampling scheme to obtain oversampled, but independent samples from the misaligned and overlapped signals. Given the whitened samples, an ML estimator and an aligned-sample estimator are devised to estimate the arithmetic sum of the transmitted symbols. Extensive simulations on the test accuracy versus the average received energy per symbol to noise power spectral density ratio (EsN0) yield two main results: 1) In the low EsN0 regime, the aligned-sample estimator can achieve superior test accuracy provided that the phase misalignment is not severe. In contrast, the ML estimator does not work well due to the error propagation and noise enhancement. 2) In the high EsN0 regime, the ML estimator attains the optimal learning performance regardless of the severity of phase misalignment. On the other hand, the aligned-sample estimator suffers from a test-accuracy loss caused by phase misalignment.
Tipologia CRIS:
Relazione in Atti di Convegno
Keywords:
Federated edge learning; maximum likelihood estimation; over-the-air computation
Elenco autori:
Shao, Y.; Gunduz, D.; Liew, S. C.
Link alla scheda completa:
https://iris.unimore.it/handle/11380/1280016
Titolo del libro:
IEEE Workshop on Signal Processing Advances in Wireless Communications, SPAWC
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