结合句法信息和HMM进行词提取

Huashan PAN, Ji-Yuan Zhao
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引用次数: 0

摘要

针对中文同义词典的构建问题,提出了一种利用HMM从学术文献中提取新词的方法,用于自动扩充中文同义词典的词条。该方法将新术语提取问题转化为序列标注问题。它利用HMM充分集成新词的词汇信息、句法信息以及局部上下文信息,从人工语料库中自动学习,获得新词提取模型。在提取新术语时,采用Iturbi算法自动从文本中提取新术语。然后,该方法接收这些新术语作为候选入口词。最后,我们添加了内容特征过滤条件和频率过滤条件,以供进一步选择。实验结果表明,该方法在术语提取方面具有良好的性能,对自动扩充词库入口词起到了重要的支持作用。
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Combining Syntactic Information with HMM for Term Extraction
Aiming at the problem of Chinese thesaurus construction, we propose a method of using HMM to extract new terms from academic literature to expand automatically entry-words for Chinese thesaurus. This method converts the new terms extraction problem to a sequence labelling problem. It uses HMM fully integrated lexical information and syntactic information of new terms, as well as local context information, to learn automatically from the artificial corpus and obtain new terms extraction model. When new terms were extracted, Iturbi algorithm is used to extract automatically new terms from texts. Then this method receives these new terms as candidate entry-words. Eventually, we add content features filter conditions and frequency filter conditions for further selection. Experiment results show that the method has a good performance on terms extraction, and plays an important supporting role on expanding automatically entry-words for thesaurus.
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