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Directed Acyclic Transformer for Non-Autoregressive Machine Translation

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arxiv 2205.07459 v1 pith:SDS5DOL4 submitted 2022-05-16 cs.CL

Directed Acyclic Transformer for Non-Autoregressive Machine Translation

classification cs.CL
keywords acyclicdirectednatsnon-autoregressiveda-transformergeneratingmultiplepredictions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Non-autoregressive Transformers (NATs) significantly reduce the decoding latency by generating all tokens in parallel. However, such independent predictions prevent NATs from capturing the dependencies between the tokens for generating multiple possible translations. In this paper, we propose Directed Acyclic Transfomer (DA-Transformer), which represents the hidden states in a Directed Acyclic Graph (DAG), where each path of the DAG corresponds to a specific translation. The whole DAG simultaneously captures multiple translations and facilitates fast predictions in a non-autoregressive fashion. Experiments on the raw training data of WMT benchmark show that DA-Transformer substantially outperforms previous NATs by about 3 BLEU on average, which is the first NAT model that achieves competitive results with autoregressive Transformers without relying on knowledge distillation.

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