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Learning Light-Weight Translation Models from Deep Transformer

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arxiv 2012.13866 v1 pith:ULBQK6Y5 submitted 2020-12-27 cs.CL

Learning Light-Weight Translation Models from Deep Transformer

classification cs.CL
keywords modeldeepbleulearninglight-weightmethodmodelssystems
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, deep models have shown tremendous improvements in neural machine translation (NMT). However, systems of this kind are computationally expensive and memory intensive. In this paper, we take a natural step towards learning strong but light-weight NMT systems. We proposed a novel group-permutation based knowledge distillation approach to compressing the deep Transformer model into a shallow model. The experimental results on several benchmarks validate the effectiveness of our method. Our compressed model is 8X shallower than the deep model, with almost no loss in BLEU. To further enhance the teacher model, we present a Skipping Sub-Layer method to randomly omit sub-layers to introduce perturbation into training, which achieves a BLEU score of 30.63 on English-German newstest2014. The code is publicly available at https://github.com/libeineu/GPKD.

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