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arxiv 2006.10414 v1 pith:YM2JST55 submitted 2020-06-18 eess.AS cs.SD

Multi-Encoder-Decoder Transformer for Code-Switching Speech Recognition

classification eess.AS cs.SD
keywords architecturelanguagespeechattentioncode-switchingcorpusdecoderlanguage-specific
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Code-switching (CS) occurs when a speaker alternates words of two or more languages within a single sentence or across sentences. Automatic speech recognition (ASR) of CS speech has to deal with two or more languages at the same time. In this study, we propose a Transformer-based architecture with two symmetric language-specific encoders to capture the individual language attributes, that improve the acoustic representation of each language. These representations are combined using a language-specific multi-head attention mechanism in the decoder module. Each encoder and its corresponding attention module in the decoder are pre-trained using a large monolingual corpus aiming to alleviate the impact of limited CS training data. We call such a network a multi-encoder-decoder (MED) architecture. Experiments on the SEAME corpus show that the proposed MED architecture achieves 10.2% and 10.8% relative error rate reduction on the CS evaluation sets with Mandarin and English as the matrix language respectively.

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  1. Progressive Refinement: An Iterative Pseudo-Labeling Approach for Mandarin-English Code-Switching ASR

    cs.CL 2026-07 conditional novelty 4.0

    Iterative pseudo-labeling on 22.4k hours of unlabeled code-switching audio reduces Mix Error Rate on SEAME devman to 12.88% and devsge to 18.89%.