Fine context, low-rank, softplus deep neural networks for mobile speech recognition

Acoustics, Speech and Signal Processing(2014)

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摘要
We investigate the use of large state inventories and the softplus nonlinearity for on-device neural network based mobile speech recognition. Large state inventories are achieved by less aggressive context-dependent state tying, and made possible by using a bottleneck layer to contain the number of parameters. We investigate alternative approaches to the bottleneck layer, demonstrate the superiority of the softplus non-linearity and investigate alternatives for the final stages of the training algorithm. Overall we reduce the word error rate of the system by 9% relative. The techniques are also shown to work well for large acoustic models for cloud-based speech recognition.
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关键词
mobile computing,neural nets,speech recognition,acoustic models,bottleneck layer,cloud based speech recognition,fine context,large state inventories,low-rank,mobile speech recognition,softplus deep neural networks,softplus nonlinearity,training algorithm,word error rate,Deep neural networks,Voice Search,embedded recognizer,hybrid neural network speech recognition,low-rank approximation,mobile speech recognition,singular value decomposition,softplus nonlinearity
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