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Syntax-based Semi-Supervised Named Entity Tagging

机译:基于语法的半监督命名实体标记

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摘要

We report an empirical study on the role of syntactic features in building a semi-supervised named entity (NE) tagger. Our study addresses two questions: What types of syntactic features are suitable for extracting potential NEs to train a classifier in a semi-supervised setting? How good is the resulting NE classifier on testing instances dissimilar from its training data? Our study shows that constituency and dependency parsing constraints are both suitable features to extract NEs and train the classifier. Moreover, the classifier showed significant accuracy improvement when constituency features are combined with new dependency feature. Furthermore, the degradation in accuracy on unfamiliar test cases is low, suggesting that the trained classifier generalizes well.
机译:我们报告了句法功能在构建半监督命名实体(NE)标记器中作用的实证研究。我们的研究解决了两个问题:哪种类型的句法特征适合于在半监督的环境中提取潜在的NE来训练分类器?测试实例上所得的NE分类器与训练数据有何不同?我们的研究表明,选区和依赖项解析约束都是提取网元和训练分类器的合适特征。此外,当选区特征与新的从属特征组合时,分类器显示出显着的准确性提高。此外,在不熟悉的测试用例上,准确性的降低很低,这表明训练有素的分类器可以很好地推广。

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