Publication | Closed Access
Domain-Aware Neural Language Models for Speech Recognition
15
Citations
19
References
2021
Year
Unknown Venue
Llm Fine-tuningEngineeringMachine LearningWord Error RateSpoken Language ProcessingLarge Language ModelLanguage ProcessingSpeech RecognitionNatural Language ProcessingData ScienceComputational LinguisticsSpeech InterfaceLanguage ModelsReal-time LanguageMachine TranslationHealth SciencesSpeech CommunicationVoice AssistantsVoiceDomain AdaptationSpeech AcousticsSpeech ProcessingSpeech InputDomain-aware Rescoring FrameworkLinguistics
As voice assistants become more ubiquitous, they are increasingly expected to support and perform well on a wide variety of use-cases across different domains. We present a domain-aware rescoring framework suitable for achieving domain-adaptation during second-pass rescoring in production settings. In our framework, we fine-tune a domain-general neural language model on several domains, and use an LSTM-based domain classification model to select the appropriate domain-adapted model to use for second-pass rescoring. This domain-aware rescoring improves the word error rate by up to 2.4% and slot word error rate by up to 4.1% on three individual domains – shopping, navigation, and music – compared to domain general rescoring. These improvements are obtained while maintaining accuracy for the general use case.
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