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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Improving Neural Machine Translation with AMR Semantic Graphs
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Improving Neural Machine Translation with AMR Semantic Graphs

机译:用AMR语义图改善神经机翻译

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摘要

The Seq2Seq model and its variants (ConvSeq2Seq and Transformer) emerge as a promising novel solution to the machine translation problem. However, these models only focus on exploiting knowledge from bilingual sentences without paying much attention to utilizing external linguistic knowledge sources such as semantic representations. Not only do semantic representations can help preserve meaning but they also minimize the data sparsity problem. However, to date, semantic information remains rarely integrated into machine translation models. In this study, we examine the effect of abstract meaning representation (AMR) semantic graphs in different machine translation models. Experimental results on the IWSLT15 English-Vietnamese dataset have proven the efficiency of the proposed model, expanding the use of external language knowledge sources to significantly improve the performance of machine translation models, especially in the application of low-resource language pairs.
机译:SEQ2SEQ模型及其变体(ChancSeq2Seq和变压器)出现为机器翻译问题的有希望的新解决方案。 然而,这些模型仅关注从双语句子的利用知识,而不会注意利用外部语言知识来源,如语义表示。 语义表示不仅可以帮助保留意义,但它们还会最大限度地减少数据稀疏问题。 但是,迄今为止,语义信息仍然很少集成到机器翻译模型中。 在这项研究中,我们研究了抽象意义表示(AMR)语义图形在不同机器翻译模型中的效果。 实验结果对IWSLT15英语 - 越南数据集已经证明了拟议模型的效率,扩大了外部语言知识来源的使用,以显着提高机器翻译模型的性能,尤其是在应用低资源语言对的应用。

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