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Neural-FST Class Language Model for End-to-End Speech Recognition

Published 28 Jan 2022 in cs.CL, cs.SD, and eess.AS | (2201.11867v2)

Abstract: We propose Neural-FST Class LLM (NFCLM) for end-to-end speech recognition, a novel method that combines neural network LLMs (NNLMs) and finite state transducers (FSTs) in a mathematically consistent framework. Our method utilizes a background NNLM which models generic background text together with a collection of domain-specific entities modeled as individual FSTs. Each output token is generated by a mixture of these components; the mixture weights are estimated with a separately trained neural decider. We show that NFCLM significantly outperforms NNLM by 15.8% relative in terms of Word Error Rate. NFCLM achieves similar performance as traditional NNLM and FST shallow fusion while being less prone to overbiasing and 12 times more compact, making it more suitable for on-device usage.

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