Semantically driven inversion transduction grammar induction for early stage training of spoken language translation

Meriem Beloucif, Dekai Wu
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Abstract

We propose an approach in which we inject a crosslingual semantic frame based objective function directly into inversion transduction grammar (ITG) induction in order to semantically train spoken language translation systems. This approach represents a follow-up of our recent work on improving machine translation quality by tuning loglinear mixture weights using a semantic frame based objective function in the late, final stage of statistical machine translation training. In contrast, our new approach injects a semantic frame based objective function back into earlier stages of the training pipeline, during the actual learning of the translation model, biasing learning toward semantically more accurate alignments. Our work is motivated by the fact that ITG alignments have empirically been shown to fully cover crosslingual semantic frame alternations. We show that injecting a crosslingual semantic based objective function for driving ITG induction further sharpens the ITG constraints, leading to better performance than either the conventional ITG or the traditional GIZA++ based approaches.
语义驱动倒转转导语法归纳在口语翻译早期训练中的应用
本文提出了一种将基于目标函数的跨语言语义框架直接注入到倒转语法(ITG)归纳中的方法,以对口语翻译系统进行语义训练。这种方法代表了我们最近在统计机器翻译训练的最后阶段通过使用基于语义框架的目标函数调整线性混合权重来提高机器翻译质量的后续工作。相比之下,我们的新方法将基于语义框架的目标函数注入到训练管道的早期阶段,在翻译模型的实际学习期间,将学习偏向于语义上更准确的对齐。我们的工作的动机是,ITG对齐已经被经验证明完全覆盖跨语言语义框架的变化。我们发现,注入一个基于跨语言语义的目标函数来驱动ITG诱导,进一步强化了ITG约束,导致比传统的ITG或传统的基于giz++的方法更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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