NeurAlign: combining word alignments using neural networks

HLT/EMNLP(2005)

引用 35|浏览27
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摘要
This paper presents a novel approach to combining different word alignments. We view word alignment as a pattern classification problem, where alignment combination is treated as a classifier ensemble, and alignment links are adorned with linguistic features. A neural network model is used to learn word alignments from the individual alignment systems. We show that our alignment combination approach yields a significant 20--34% relative error reduction over the best-known alignment combination technique on English-Spanish and English-Chinese data.
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关键词
classifier ensemble,novel approach,individual alignment system,alignment link,neural network,different word alignment,alignment combination,best-known alignment combination technique,english-chinese data,alignment combination approach yield,word alignment,neural network model
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