基于注意力的旅游领域英博神经机器翻译系统

Sanjib Narzary, Maharaj Brahma, Bobita Singha, Rangjali Brahma, Bonali Dibragede, Sunita Barman, Sukumar Nandi, Bidisha Som
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引用次数: 3

摘要

博多语是一种资源相对较低的语言。除了教科书、小说和一些报纸的印刷出版物外,在公共领域可以获得的资源似乎很少。随着这项技术变得负担得起,活跃的Bodo互联网用户越来越多。它需要一种能够用他们自己的语言传递信息的技术。机器翻译似乎是一个很有前途的解决方案。在这项工作中,我们通过采用两层双向长短期记忆(LSTM)细胞来捕获长期依赖关系,构建了一个英语- bodo神经机器翻译。由于在英语- bodo NMT上做的工作很少,我们建立了基线模型,该模型产生了11.8的BLEU分数。然后,我们通过引入几种注意机制来逐步克服基线模型。使用Bahdanu提出的方法,我们获得了16.71的BLEU评分。此外,当我们引入波束宽度为5的波束搜索时,我们获得了17.9的更好的BLEU分数。我们发现,尽管可用的数据集很少,但该模型表现非常好。
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Attention based English-Bodo Neural Machine Translation System for Tourism Domain
Bodo language is a relatively low resource language. Other than the text-book, novels and some print publication of newspaper, there appears to be very few resources available in the public domain. As the technology becomes affordable there is a growing number of active Bodo internet users. It requires a technology that can bring information in their own language. Machine translation appears to be a promising solution for that purpose. In this work we build an English-Bodo Neural Machine Translation by adopting a two layered bidirectional Long Short Term Memory (LSTM) cells that can capture the long term dependencies. As very few work has been done on English-Bodo NMT, we make our baseline model which produced a BLEU Score of 11.8 . We then gradually overcome the baseline model by introducing several attention mechanism. We achieved a BLEU Score of 16.71 using the approach presented in Bahdanu. Furthermore we got a better BLEU score of 17.9 when we introduced beam search with a beam width of 5. We found that the model performs very well despite the few dataset available.
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