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Large-Scale Language Model Rescoring on Long-Form Data

Tongzhou Chen, Cyril Allauzen, Yinghui Huang, Daniel Park, David Rybach, Wei Huang, Rodrigo Cabrera, Kartik Audhkhasi, Bhuvana Ramabhadran, Pedro J. Moreno, Michael Riley

202315 citationsDOI

Abstract

In this work, we study the impact of Large-scale Language Models (LLM) on Automated Speech Recognition (ASR) of YouTube videos, which we use as a source for long-form ASR. We demonstrate up to 8% relative reduction in Word Error Eate (WER) on US English (en-us) and code-switched Indian English (en-in) long-form ASR test sets and a reduction of up to 30% relative on Salient Term Error Rate (STER) over a strong first-pass baseline that uses a maximum-entropy based language model. Improved lattice processing that results in a lattice with a proper (non-tree) digraph topology and carrying context from the 1-best hypothesis of the previous segment(s) results in significant wins in rescoring with LLMs. We also find that the gains in performance from the combination of LLMs trained on vast quantities of available data (such as C4 [1]) and conventional neural LMs is additive and significantly outperforms a strong first-pass baseline with a maximum entropy LM.

Topics & Concepts

Computer scienceWord error rateLanguage modelSalientSpeech recognitionLattice (music)Natural language processingEntropy (arrow of time)Baseline (sea)Artificial intelligenceMachine learningGeologyOceanographyPhysicsQuantum mechanicsAcousticsSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing
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