基于机器学习的汉语子分类标注

Xiwu Han
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引用次数: 0

摘要

针对子范畴框架的大规模自动习得已经有了大量的研究,在不少语言的词典构建方面也取得了不少成果,但对单个句子的子范畴标注仍然是一个很少有人涉足的领域。本文提出了利用序列核方法将汉语子分类标注为分类任务,该方法利用了各句子成分之间的潜在关系。我们最终使用词序列核聚类和POS序列核C-SVM进行分类,在测试集上的准确率达到了92.36%,比现有中文SCF假设生成器的基准性能提高了13.51%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chinese Subcategorization Annotation Based on Machine Learning
There have been a lot of researches focusing on large-scaled automatic acquisition of subcategorization frames, and many achievements have been made for lexicon building in quite a few languages, but subcategorization annotation for individual sentences still remains in a rarely touched field. This paper proposed to annotate Chinese subcategorization as a classification task by means of sequence kernel methods, which exploited the potential relations among the respective sentential constituents. Our final classification with word sequence kernel congregation and POS sequence kernel C-SVM achieved a very promising accuracy ratio of 92.36% on the testing set, which is 13.51% higher than the baseline performance of the existing Chinese SCF hypothesis generator.
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