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A Machine-Learning Approach to Estimating the Referential Properties of Japanese Noun Phrases

机译:估计日语名词的指称特性的机器学习方法

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The referential properties of noun phrases in the Japanese language, which has no articles, are useful for article generation in Japanese-English machine translation and for anaphora resolution in Japanese noun phrases. They are generally classified as generic noun phrases, definite noun phrases, and indefinite noun phrases. In the previous work, referential properties were estimated by developing rules that used clue words. If two or more rules were in conflict with each other, the category having the maximum total score given by the rules was selected as the desired category. The score given by each rule was established by hand, so the manpower cost was high. In this work, we automatically adjusted these scores by using a machine-learning method and succeeded in reducing the amount of manpower needed to adjust these scores.
机译:日语中没有文章的名词短语的参照属性对于日语-英语机器翻译中的文章生成以及日语名词短语的回指解析很有用。它们通常分为通用名词短语,定名词短语和不定名词短语。在以前的工作中,通过开发使用线索词的规则来估计引用属性。如果两个或多个规则相互冲突,则将具有该规则给出的最大总分的类别选择为所需类别。每个规则给出的分数都是手工确定的,因此人力成本很高。在这项工作中,我们使用机器学习方法自动调整了这些分数,并成功减少了调整这些分数所需的人力。

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