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STATISTICAL MACHINE TRANSLATION IMPROVEMENT BASED ON PHRASE SELECTION

机译:基于短语选择的统计机器翻译改进

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This paper describes the importance of introducing a phrase-based language model in the process of machine translation. In fact, nowadays SMT are based on phrases for translation but their language models are based on classical ngrams. In this paper we introduce a phrase-based language model (PBLM) in the decoding process to try to match the phrases of a translation table with those predicted by a language model. Furthermore, we propose a new way to retrieve phrases and their corresponding translation by using the principle of conditional mutual information. The SMT developed will be compared to the baseline one in terms of BLEU, TER and METEOR. The experimental results show that the introduction of PBLM in the translation decoding improve the results.
机译:本文描述了在机器翻译过程中引入基于短语的语言模型的重要性。实际上,如今的SMT都是基于短语进行翻译的,但是它们的语言模型却是基于古典ngram的。在本文中,我们在解码过程中引入了基于短语的语言模型(PBLM),以尝试将翻译表中的短语与语言模型预测的短语进行匹配。此外,我们提出了一种利用条件互信息原理检索短语及其对应翻译的新方法。所开发的SMT将在BLEU,TER和METEOR方面与基准之一进行比较。实验结果表明,在翻译解码中引入PBLM可以改善结果。

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