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Training Speech Recognition Models with Federated Learning: A Quality/Cost Framework

机译:培训讲话识别模型与联合学习:质量/成本框架

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We propose using federated learning, a decentralized on-device learning paradigm, to train speech recognition models. By performing epochs of training on a per-user basis, federated learning must incur the cost of dealing with non-IID data distributions, which are expected to negatively affect the quality of the trained model. We propose a framework by which the degree of non-IID-ness can be varied, consequently illustrating a trade-off between model quality and the computational cost of federated training, which we capture through a novel metric. Finally, we demonstrate that hyper-parameter optimization and appropriate use of variational noise are sufficient to compensate for the quality impact of non-IID distributions, while decreasing the cost.
机译:我们建议使用联合学习,一个分散的设备学习范式,培训语音识别模型。 通过按照每用户的培训划长,联合学习必须承担处理非IID数据分布的成本,这预计将对培训模型的质量产生负面影响。 我们提出了一个框架,通过该框架可以改变非IID-ness的程度,从而说明模型质量与联邦培训的计算成本之间的权衡,我们通过新的公制捕获。 最后,我们证明了超参数优化和适当使用变分噪声来补偿非IID分布的质量影响,同时降低成本。

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