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Improving Rare Word Recognition with LM-aware MWER Training

By Weiran Wang and others
Language models (LMs) significantly improve the recognition accuracy of end-to-end (E2E) models on words rarely seen during training, when used in either the shallow fusion or the rescoring setups. In this work, we introduce LMs in the learning of hybrid autoregressive transducer (HAT) models in the discriminative training framework, to... Show more
June 27, 2022
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Improving Rare Word Recognition with LM-aware MWER Training
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