首页> 外文会议>2002 Conference on Empirical Methods in Natural Language Processing; Jul 6-7, 2002; Philadelphia, PA, USA >A Bootstrapping Method for Learning Semantic Lexicons using Extraction Pattern Contexts
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A Bootstrapping Method for Learning Semantic Lexicons using Extraction Pattern Contexts

机译:使用提取模式上下文学习语义词汇的自举方法

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摘要

This paper describes a bootstrapping algorithm called Basilisk that learns high-quality semantic lexicons for multiple categories. Basilisk begins with an unannotated corpus and seed words for each semantic category, which are then bootstrapped to learn new words for each category. Basilisk hypothesizes the semantic class of a word based on collective information over a large body of extraction pattern contexts. We evaluate Basilisk on six semantic categories. The semantic lexicons produced by Basilisk have higher precision than those produced by previous techniques, with several categories showing substantial improvement.
机译:本文介绍了一种称为Basilisk的自举算法,该算法可学习多个类别的高质量语义词典。蛇怪兽以每个语义类别的无注释语料和种子词开始,然后被引导以学习每个类别的新词。蛇怪基于大量抽取模式上下文中的集体信息来假设单词的语义类别。我们在六个语义类别上评估蛇怪。 Basilisk产生的语义词典比以前的技术产生的语义词典精度更高,其中几个类别显示出实质性的改进。

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