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Prompting Large Language Models for Zero-Shot Domain Adaptation in Speech Recognition

Yuang Li, Yu Wu, Jinyu Li, Shujie Liu

202318 citationsDOI

Abstract

The integration of Language Models (LMs) has proven to be an effective way to address domain shifts in speech recognition. However, these approaches usually require a significant amount of target domain text data for the training of LMs. Different from these methods, in this work, with only a domain-specific text prompt, we propose two zero-shot ASR domain adaptation methods using LLaMA, a 7-billionparameter large language model (LLM). LLM is used in two ways: 1) second-pass rescoring: reranking N-best hypotheses of a given ASR system with LLaMA; 2) deep LLM-fusion: incorporating LLM into the decoder of an encoder-decoder based ASR system. Experiments show that, with only one domain prompt, both methods can effectively reduce word error rates (WER) on out-of-domain TedLium-2 and SPGISpeech datasets. Especially, the deep LLM-fusion has the advantage of better recall of entity and out-of-vocabulary words.

Topics & Concepts

Computer scienceLanguage modelSpeech recognitionVocabularyDomain (mathematical analysis)EncoderArtificial intelligenceWord error rateDomain adaptationWord (group theory)Zero (linguistics)Natural language processingDecoding methodsAlgorithmMathematicsOperating systemLinguisticsPhilosophyClassifier (UML)Mathematical analysisGeometrySpeech Recognition and SynthesisNatural Language Processing TechniquesTopic Modeling