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Ordering Translation Templates by Assigning Confidence Factors

机译:通过分配置信因素来排序翻译模板

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TTL (Translation Template Learner) algorithm learns lexical level correspondences between two translation examples by using analogical reasoning. The sentences used as translation examples have similar and different parts in the source language which must correspond to the similar and different parts in the target language. Therefore these correspondences are learned as translation templates. The learned translation templates are used in the translation of other sentences. However, we need to assign confidence factors to these translation templates to order translation results with respect to previously assigned confidence factors. This paper proposes a method for assigning confidence factors to translation templates learned by the TTL algorithm. Training data is used for collecting statistical information that will be used in confidence factor assignment process. In this process, each template is assigned a confidence factor according to the statistical information obtained from training data. Furthermore, some template combinations are also assigned confidence factors in order to eliminate certain combinations resulting bad translation.
机译:TTL(翻译模板学习者)算法通过使用模拟推理来在两个平移示例之间了解词汇级别对应关系。作为翻译示例的句子在源语言中具有类似且不同的部分,其必须对应于目标语言中的类似和不同部分。因此,这些相应的关系被学习为翻译模板。学习的翻译模板用于其他句子的翻译。但是,我们需要为这些翻译模板分配置信因素,以便在以前分配的置信因素方面进行翻译结果。本文提出了一种用于将置信因素分配给TTL算法学习的翻译模板的方法。培训数据用于收集将用于置信因子分配过程中的统计信息。在该过程中,根据从训练数据获得的统计信息,分配每个模板的置信因子。此外,还分配了一些模板组合,以便消除某些组合,从而产生了不良翻译。

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