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The Microsoft 2016 Conversational Speech Recognition System

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arxiv 1609.03528 v2 pith:4ZROGRSE submitted 2016-09-12 cs.CL eess.AS

The Microsoft 2016 Conversational Speech Recognition System

classification cs.CL eess.AS
keywords systemacousticmodelrecognitiontaskconversationalerrorlanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We describe Microsoft's conversational speech recognition system, in which we combine recent developments in neural-network-based acoustic and language modeling to advance the state of the art on the Switchboard recognition task. Inspired by machine learning ensemble techniques, the system uses a range of convolutional and recurrent neural networks. I-vector modeling and lattice-free MMI training provide significant gains for all acoustic model architectures. Language model rescoring with multiple forward and backward running RNNLMs, and word posterior-based system combination provide a 20% boost. The best single system uses a ResNet architecture acoustic model with RNNLM rescoring, and achieves a word error rate of 6.9% on the NIST 2000 Switchboard task. The combined system has an error rate of 6.2%, representing an improvement over previously reported results on this benchmark task.

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