Lexically Cohesive Neural Machine Translation with Copy Mechanism

Autor: Mishra, Vipul, Chu, Chenhui, Arase, Yuki
Rok vydání: 2020
Předmět:
Druh dokumentu: Working Paper
Popis: Lexically cohesive translations preserve consistency in word choices in document-level translation. We employ a copy mechanism into a context-aware neural machine translation model to allow copying words from previous translation outputs. Different from previous context-aware neural machine translation models that handle all the discourse phenomena implicitly, our model explicitly addresses the lexical cohesion problem by boosting the probabilities to output words consistently. We conduct experiments on Japanese to English translation using an evaluation dataset for discourse translation. The results showed that the proposed model significantly improved lexical cohesion compared to previous context-aware models.
Databáze: arXiv