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Modality Adaption or Regularization? A Case Study on End-to-End Speech Translation

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arxiv 2306.07650 v1 pith:MKPXBF2D submitted 2023-06-13 cs.CL cs.SDeess.AS

Modality Adaption or Regularization? A Case Study on End-to-End Speech Translation

classification cs.CL cs.SDeess.AS
keywords fine-tuningmodalityspeechadaptioncasedataend-to-endfind
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Pre-training and fine-tuning is a paradigm for alleviating the data scarcity problem in end-to-end speech translation (E2E ST). The commonplace "modality gap" between speech and text data often leads to inconsistent inputs between pre-training and fine-tuning. However, we observe that this gap occurs in the early stages of fine-tuning, but does not have a major impact on the final performance. On the other hand, we find that there has another gap, which we call the "capacity gap": high resource tasks (such as ASR and MT) always require a large model to fit, when the model is reused for a low resource task (E2E ST), it will get a sub-optimal performance due to the over-fitting. In a case study, we find that the regularization plays a more important role than the well-designed modality adaption method, which achieves 29.0 for en-de and 40.3 for en-fr on the MuST-C dataset. Code and models are available at https://github.com/hannlp/TAB.

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