- 专利标题: UNSUPERVISED FEDERATED LEARNING OF MACHINE LEARNING MODEL LAYERS
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申请号: US16973605申请日: 2020-07-20
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公开(公告)号: US20220270590A1公开(公告)日: 2022-08-25
- 发明人: Françoise Beaufays , Khe Chai Sim , Johan Schalkwyk
- 申请人: Google LLC
- 申请人地址: US CA Mountain View
- 专利权人: Google LLC
- 当前专利权人: Google LLC
- 当前专利权人地址: US CA Mountain View
- 国际申请: PCT/US2020/042806 WO 20200720
- 主分类号: G10L15/06
- IPC分类号: G10L15/06 ; G10L15/30 ; G10L15/22 ; G10L15/187
摘要:
Implementations disclosed herein are directed to unsupervised federated training of global machine learning (“ML”) model layers that, after the federated training, can be combined with additional layer(s), thereby resulting in a combined ML model. Processor(s) can: detect audio data that captures a spoken utterance of a user of a client device; process, using a local ML model, the audio data to generate predicted output(s); generate, using unsupervised learning locally at the client device, a gradient based on the predicted output(s); transmit the gradient to a remote system; update weight(s) of the global ML model layers based on the gradient; subsequent to updating the weight(s), train, using supervised learning remotely at the remote system, a combined ML model that includes the updated global ML model layers and additional layer(s); transmit the combined ML model to the client device; and use the combined ML model to make prediction(s) at the client device.
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