A study of neural network Russian language models for automatic continuous speech recognition systems

A study of neural network Russian language models for automatic continuous speech recognition systems

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Article ID: iaor20171888
Volume: 78
Issue: 5
Start Page Number: 858
End Page Number: 867
Publication Date: May 2017
Journal: Automation and Remote Control
Authors: ,
Keywords: neural networks
Abstract:

We show the results of studying models of the Russian language constructed with recurrent artificial neural networks for systems of automatic recognition of continuous speech. We construct neural network models with different number of elements in the hidden layer and perform linear interpolation of neural network models with the baseline trigram language model. The resulting models were used at the stage of rescoring the N best list. In our experiments on the recognition of continuous Russian speech with extra‐large vocabulary (150 thousands of word forms), the relative reduction in the word error rate obtained after rescoring the 50 best list with the neural network language models interpolated with the trigram model was 14%.

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