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Shiftable Context: Addressing Training-Inference Context Mismatch in Simultaneous Speech Translation

Shiftable Context improves translation accuracy by ensuring consistent segment and context sizes in streaming simultaneous speech translation, enhancing BLEU scores for multiple language pairs with minimal impact on computational lag.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2307.01377ARXIV-DEFAULT
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Abstract

Transformer models using segment-based processing have been an effective architecture for simultaneous speech translation. However, such models create a context mismatch between training and inference environments, hindering potential translation accuracy. We solve this issue by proposing Shiftable Context, a simple yet effective scheme to ensure that consistent segment and context sizes are maintained throughout training and inference, even with the presence of partially filled segments due to the streaming nature of simultaneous translation. Shiftable Context is also broadly applicable to segment-based transformers for streaming tasks. Our experiments on the English-German, English-French, and English-Spanish language pairs from the MUST-C dataset demonstrate that when applied to the Augmented Memory Transformer, a state-of-the-art model for simultaneous speech translation, the proposed scheme achieves an average increase of 2.09, 1.83, and 1.95 BLEU scores across each wait-k value for the three language pairs, respectively, with a minimal impact on computation-aware Average Lagging.

Authors

3