Document-level Neural Machine Translation With Associated Memory Network · The Large Language Model Bible Contribute to LLM-Bible

Document-level Neural Machine Translation With Associated Memory Network

Jiang Shu, Wang Rui, Li Zuchao, Utiyama Masao, Chen Kehai, Sumita Eiichiro, Zhao Hai, Lu Bao-liang. Arxiv 2019

[Paper]    
Applications Model Architecture Pretraining Methods Transformer

Standard neural machine translation (NMT) is on the assumption that the document-level context is independent. Most existing document-level NMT approaches are satisfied with a smattering sense of global document-level information, while this work focuses on exploiting detailed document-level context in terms of a memory network. The capacity of the memory network that detecting the most relevant part of the current sentence from memory renders a natural solution to model the rich document-level context. In this work, the proposed document-aware memory network is implemented to enhance the Transformer NMT baseline. Experiments on several tasks show that the proposed method significantly improves the NMT performance over strong Transformer baselines and other related studies.

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