首页> 外文会议>International Conference on Computational Linguistics(Coling 2004) vol.1; 20040823-27; Geneva(CH) >Example-based Machine Translation Based on Syntactic Transfer with Statistical Models
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Example-based Machine Translation Based on Syntactic Transfer with Statistical Models

机译:基于带有统计模型的句法转移的基于实例的机器翻译

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摘要

This paper presents example-based machine translation (MT) based on syntactic transfer, which selects the best translation by using models of statistical machine translation. Example-based MT sometimes generates invalid translations because it selects similar examples to the input sentence based only on source language similarity. The method proposed in this paper selects the best translation by using a language model and a translation model in the same manner as statistical MT, and it can improve MT quality over that of 'pure' example-based MT. A feature of this method is that the statistical models are applied after word re-ordering is achieved by syntactic transfer. This implies that MT quality is maintained even when we only apply a lexicon model as the translation model. In addition, translation speed is improved by bottom-up generation, which utilizes the tree structure that is output from the syntactic transfer.
机译:本文提出了一种基于句法转移的基于示例的机器翻译(MT),它通过使用统计机器翻译模型来选择最佳翻译。基于示例的MT有时会生成无效的翻译,因为它仅基于源语言相似性来选择与输入句子相似的示例。本文提出的方法通过使用语言模型和翻译模型以与统计MT相同的方式选择最佳翻译,并且与“纯”基于示例的MT相比,它可以提高MT质量。该方法的一个特点是,在通过句法转移实现单词重新排序之后,才应用统计模型。这意味着即使仅将词典模型用作翻译模型,也可以保持MT质量。另外,通过使用自句法转换输出的树形结构,自下而上的生成提高了翻译速度。

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