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arxiv: 2210.12214 · v1 · pith:CVNIJMVDnew · submitted 2022-10-21 · 💻 cs.SD · cs.CL· eess.AS

Optimizing Bilingual Neural Transducer with Synthetic Code-switching Text Generation

classification 💻 cs.SD cs.CLeess.AS
keywords code-switchingbilingualdataneuralspeechsystemtransducerascend
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Code-switching describes the practice of using more than one language in the same sentence. In this study, we investigate how to optimize a neural transducer based bilingual automatic speech recognition (ASR) model for code-switching speech. Focusing on the scenario where the ASR model is trained without supervised code-switching data, we found that semi-supervised training and synthetic code-switched data can improve the bilingual ASR system on code-switching speech. We analyze how each of the neural transducer's encoders contributes towards code-switching performance by measuring encoder-specific recall values, and evaluate our English/Mandarin system on the ASCEND data set. Our final system achieves 25% mixed error rate (MER) on the ASCEND English/Mandarin code-switching test set -- reducing the MER by 2.1% absolute compared to the previous literature -- while maintaining good accuracy on the monolingual test sets.

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