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Enriching Under-Represented Named-Entities To Improve Speech Recognition Performance (2010.12143v1)

Published 23 Oct 2020 in cs.SD and eess.AS

Abstract: Automatic speech recognition (ASR) for under-represented named-entity (UR-NE) is challenging due to such named-entities (NE) have insufficient instances and poor contextual coverage in the training data to learn reliable estimates and representations. In this paper, we propose approaches to enriching UR-NEs to improve speech recognition performance. Specifically, our first priority is to ensure those UR-NEs to appear in the word lattice if there is any. To this end, we make exemplar utterances for those UR-NEs according to their categories (e.g. location, person, organization, etc.), ending up with an improved LLM (LM) that boosts the UR-NE occurrence in the word lattice. With more UR-NEs appearing in the lattice, we then boost the recognition performance through lattice rescoring methods. We first enrich the representations of UR-NEs in a pre-trained recurrent neural network LM (RNNLM) by borrowing the embedding representations of the rich-represented NEs (RR-NEs), yielding the lattices that statistically favor the UR-NEs. Finally, we directly boost the likelihood scores of the utterances containing UR-NEs and gain further performance improvement.

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Authors (7)
  1. Tingzhi Mao (5 papers)
  2. Yerbolat Khassanov (19 papers)
  3. Van Tung Pham (13 papers)
  4. Haihua Xu (23 papers)
  5. Hao Huang (155 papers)
  6. Aishan Wumaier (1 paper)
  7. Eng Siong Chng (112 papers)

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