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GTrans: Grouping and Fusing Transformer Layers for Neural Machine Translation

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arxiv 2207.14467 v2 pith:XS4XPBHA submitted 2022-07-29 cs.CL cs.LG

GTrans: Grouping and Fusing Transformer Layers for Neural Machine Translation

classification cs.CL cs.LG
keywords layerstransformertranslationdecoderencoderexperimentsgtransmachine
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Transformer structure, stacked by a sequence of encoder and decoder network layers, achieves significant development in neural machine translation. However, vanilla Transformer mainly exploits the top-layer representation, assuming the lower layers provide trivial or redundant information and thus ignoring the bottom-layer feature that is potentially valuable. In this work, we propose the Group-Transformer model (GTrans) that flexibly divides multi-layer representations of both encoder and decoder into different groups and then fuses these group features to generate target words. To corroborate the effectiveness of the proposed method, extensive experiments and analytic experiments are conducted on three bilingual translation benchmarks and two multilingual translation tasks, including the IWLST-14, IWLST-17, LDC, WMT-14 and OPUS-100 benchmark. Experimental and analytical results demonstrate that our model outperforms its Transformer counterparts by a consistent gain. Furthermore, it can be successfully scaled up to 60 encoder layers and 36 decoder layers.

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