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An Effective Approach to Unsupervised Machine Translation

机译:无监督机器翻译的有效方法

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While machine translation has traditionally relied on large amounts of parallel corpora, a recent research line has managed to train both Neural Machine Translation (NMT) and Statistical Machine Translation (SMT) systems using monolingual corpora only. In this paper, we identify and address several deficiencies of existing unsupervised SMT approaches by exploiting subword information, developing a theoretically well founded unsupervised tuning method, and incorporating a joint refinement procedure. Moreover, we use our improved SMT system to initialize a dual NMT model, which is further fine-tuned through on-the-fly back-translation. Together, we obtain large improvements over the previous state-of-the-art in unsupervised machine translation. For instance, we get 22.5 BLEU points in English-to-German WMT 2014, 5.5 points more than the previous best unsupervised system, and 0.5 points more than the (supervised) shared task winner back in 2014.
机译:虽然机器翻译传统上依赖大量的平行语料库,但最近的研究线已经设法使用单根语料库来培训神经电机翻译(NMT)和统计机器翻译(SMT)系统。在本文中,我们通过利用子字信息来识别和解决现有无监督的SMT方法的几种不足,从而开发理论上是创立的无监督调整方法,并结合了联合细化程序。此外,我们使用我们改进的SMT系统来初始化双NMT模型,这通过逐行的后退翻译进一步微调。我们在一起,在未经监督的机器翻译中获得了以前的最先进的大量改进。例如,我们在英语到德国WMT 2014中获得22.5个BLEU积分,比以前最好的无监督系统多为5.5分,而是超过2014年的(监督)共享任务获奖者的0.5分。

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