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arxiv: 2003.07692 · v1 · pith:NG2W5H22new · submitted 2020-03-13 · 📡 eess.AS · cs.LG· cs.SD· stat.ML

ASR Error Correction and Domain Adaptation Using Machine Translation

classification 📡 eess.AS cs.LGcs.SDstat.ML
keywords correctionerrordomainmachinesystemstranslationabsoluteadaptation
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Off-the-shelf pre-trained Automatic Speech Recognition (ASR) systems are an increasingly viable service for companies of any size building speech-based products. While these ASR systems are trained on large amounts of data, domain mismatch is still an issue for many such parties that want to use this service as-is leading to not so optimal results for their task. We propose a simple technique to perform domain adaptation for ASR error correction via machine translation. The machine translation model is a strong candidate to learn a mapping from out-of-domain ASR errors to in-domain terms in the corresponding reference files. We use two off-the-shelf ASR systems in this work: Google ASR (commercial) and the ASPIRE model (open-source). We observe 7% absolute improvement in word error rate and 4 point absolute improvement in BLEU score in Google ASR output via our proposed method. We also evaluate ASR error correction via a downstream task of Speaker Diarization that captures speaker style, syntax, structure and semantic improvements we obtain via ASR correction.

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