Soft Syntactic Constraints for Word Alignment through Discriminative Training

Colin Cherry, Dekang Lin
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引用次数: 53

Abstract

Word alignment methods can gain valuable guidance by ensuring that their alignments maintain cohesion with respect to the phrases specified by a monolingual dependency tree. However, this hard constraint can also rule out correct alignments, and its utility decreases as alignment models become more complex. We use a publicly available structured output SVM to create a max-margin syntactic aligner with a soft cohesion constraint. The resulting aligner is the first, to our knowledge, to use a discriminative learning method to train an ITG bitext parser.
判别训练对词对齐的软句法约束
单词对齐方法可以通过确保它们的对齐保持与单语依赖树指定的短语的内聚来获得有价值的指导。然而,这个硬约束也可以排除正确的对齐,并且随着对齐模型变得更加复杂,它的效用也会降低。我们使用公开可用的结构化输出支持向量机来创建具有软内聚约束的最大边距语法对齐器。据我们所知,生成的对齐器是第一个使用判别学习方法来训练ITG文本解析器的对齐器。
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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