Duplex Sequence-to-Sequence Learning for Reversible Machine Translation
–Neural Information Processing Systems
Sequence-to-sequence learning naturally has two directions. How to effectively utilize supervision signals from both directions? Existing approaches either require two separate models, or a multitask-learned model but with inferior performance. In this paper, we propose REDER (Reversible Duplex Transformer), a parameter-efficient model and apply it to machine translation. Thus REDER enables {\em reversible machine translation} by simply flipping the input and output ends.
Neural Information Processing Systems
Jan-18-2025, 17:38:51 GMT
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