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Federated Learning with Dynamic Transformer for Text to Speech

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arxiv 2107.08795 v1 pith:2V2QVJHU submitted 2021-07-09 cs.LG

Federated Learning with Dynamic Transformer for Text to Speech

classification cs.LG
keywords federatedlearningtransformermodelclientscommunicationconvergencedataset
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Text to speech (TTS) is a crucial task for user interaction, but TTS model training relies on a sizable set of high-quality original datasets. Due to privacy and security issues, the original datasets are usually unavailable directly. Recently, federated learning proposes a popular distributed machine learning paradigm with an enhanced privacy protection mechanism. It offers a practical and secure framework for data owners to collaborate with others, thus obtaining a better global model trained on the larger dataset. However, due to the high complexity of transformer models, the convergence process becomes slow and unstable in the federated learning setting. Besides, the transformer model trained in federated learning is costly communication and limited computational speed on clients, impeding its popularity. To deal with these challenges, we propose the federated dynamic transformer. On the one hand, the performance is greatly improved comparing with the federated transformer, approaching centralize-trained Transformer-TTS when increasing clients number. On the other hand, it achieves faster and more stable convergence in the training phase and significantly reduces communication time. Experiments on the LJSpeech dataset also strongly prove our method's advantage.

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