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arxiv: 2307.13560 · v2 · pith:2HJJOJTV · submitted 2023-07-25 · cs.CL

XDLM: Cross-lingual Diffusion Language Model for Machine Translation

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classification cs.CL
keywords diffusioncross-lingualpretrainingtranslationlanguagemachinemodelmodels
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Recently, diffusion models have excelled in image generation tasks and have also been applied to neural language processing (NLP) for controllable text generation. However, the application of diffusion models in a cross-lingual setting is less unexplored. Additionally, while pretraining with diffusion models has been studied within a single language, the potential of cross-lingual pretraining remains understudied. To address these gaps, we propose XDLM, a novel Cross-lingual diffusion model for machine translation, consisting of pretraining and fine-tuning stages. In the pretraining stage, we propose TLDM, a new training objective for mastering the mapping between different languages; in the fine-tuning stage, we build up the translation system based on the pretrained model. We evaluate the result on several machine translation benchmarks and outperformed both diffusion and Transformer baselines.

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