2022
DOI: 10.1109/tits.2022.3190294
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FEEL: Federated End-to-End Learning With Non-IID Data for Vehicular Ad Hoc Networks

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Cited by 15 publications
(4 citation statements)
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“…Moreover, it should be noted that the method of using selection or client-side clustering is essentially an asynchronous update mechanism. This method is widely utilized in standard FL, but experiments indicate that some methods directly implemented in ITS scenarios will decrease performance [127]. In addition, in dealing with the problem of uneven user resources, it is likewise possible to compensate for the performance loss of the stragglers or low-performance models via coding calculation, i.e., embedding calculation redundancy [128].…”
Section: Generated Dataset 2021mentioning
confidence: 99%
See 1 more Smart Citation
“…Moreover, it should be noted that the method of using selection or client-side clustering is essentially an asynchronous update mechanism. This method is widely utilized in standard FL, but experiments indicate that some methods directly implemented in ITS scenarios will decrease performance [127]. In addition, in dealing with the problem of uneven user resources, it is likewise possible to compensate for the performance loss of the stragglers or low-performance models via coding calculation, i.e., embedding calculation redundancy [128].…”
Section: Generated Dataset 2021mentioning
confidence: 99%
“…Regarding that the single-hop cluster structure limits the system's coverage and stability, numerous clustering algorithms based on passive multi-hop have been developed in recent years [137], [138]. Using the network topology of ITS, the work of [127] designs an end-to-end FL framework, as well as inter-cluster and inner-cluster learning algorithms, which accurately reduce redundant communication overhead. The above end-to-end approach, which can direct vehicles directly from raw data without costly labels, is widely used in ADS at present.…”
Section: Generated Dataset 2021mentioning
confidence: 99%
“…Ma et al adaptively adjusted the learning rate of the local model based on the frequency of each client's participation in global training, thus improving the accuracy in the Non-IID case [27]. Li et al designed a weighted inter-cluster recurrent update algorithm and an internal cluster recursive learning method to reduce redundant communication costs and improve the performance of deep learning models for Non-IID data [28]. Shu et al adaptively adjust the threshold to filter the training data for each client by capturing the different data distributions among clients, and selecting the suitable clients to participate in each round of global learning thus can reduce the bias of the weights and improve the model accuracy [29].…”
Section: Non-iid Problem Of Flmentioning
confidence: 99%
“…The fluctuating distribution of training data held by passing vehicles hinders traditional learning methods from achieving optimal performance. It is a significant challenge to achieve qualified learning on the non-IID data of vehicles by decentralized federated learning [17].…”
Section: Introductionmentioning
confidence: 99%