2019
DOI: 10.48550/arxiv.1912.11745
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Proof of Federated Learning: A Novel Energy-recycling Consensus Algorithm

Abstract: Proof of work (PoW), the most popular consensus mechanism for Blockchain, requires ridiculously large amounts of energy but without any useful outcome beyond determining accounting rights among miners. To tackle the drawback of PoW, we propose a novel energy-recycling consensus algorithm, namely proof of federated learning (PoFL), where the energy originally wasted to solve difficult but meaningless puzzles in PoW is reinvested to federated learning. Federated learning and pooledming, a trend of PoW, have a na… Show more

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Cited by 3 publications
(2 citation statements)
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“…By design, the models, testing, and training data are all public and the scheme does not provide any confidentiality guarantees, which makes the usability of such an approach questionable. In order to preserve the privacy of both training and testing data, Qu et al [16] have considered the use of federated learning. This enabled crowd-sourcing the workload required to train a model while using miner's local training data.…”
Section: Related Workmentioning
confidence: 99%
“…By design, the models, testing, and training data are all public and the scheme does not provide any confidentiality guarantees, which makes the usability of such an approach questionable. In order to preserve the privacy of both training and testing data, Qu et al [16] have considered the use of federated learning. This enabled crowd-sourcing the workload required to train a model while using miner's local training data.…”
Section: Related Workmentioning
confidence: 99%
“…Blockchain and FL techniques have been widely used in training a neural network with distributed data [33,83,[134][135][136][137][138][139][140][141]. For example, Weng et al [140] proposed a system called DeepChain for collaborative learning.…”
Section: Existing Studies On Leveraging Blockchain For Federated Lear...mentioning
confidence: 99%