一种基于形态学的汉语分词方法

Xiaojun Lin, Liang Zhao, Meng Zhang, Xihong Wu
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引用次数: 1

摘要

提出了一种利用形态学信息进行汉语分词的新方法。该方法将形态学引入统计模型,捕捉词内的结构关系。它在表示结构信息的能力上改进了传统条件随机场(CRFs)模型。首先,采用半自动方法对分词汉语语料库进行词法标注。生成的与结构相关的标记被集成到CRFs模型中。其次,训练联合CRFs模型,生成词法标签和词边界;在多个SIGHAN Bakeoff语料库上进行了实验,结果表明形态学信息可以显著提高汉语分词的性能,特别是对词汇外词的分词。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A morphology-based Chinese word segmentation method
This paper proposes a novel method of Chinese word segmentation utilizing morphology information. The method introduces morphology into statistical model to capture structural relationship within word. It improves the conventional Conditional Random Fields (CRFs) models on the ability of representing the structure information. Firstly, a word-segmented Chinese corpus is annotated with morphology tags by a semi-automatic method. The resulting structure-related tags are integrated into the CRFs model. Secondly, a joint CRFs model is trained, which generates both morphology tags and word boundaries. Experiments are carried out on several SIGHAN Bakeoff corpus and show that the morphology information can improve the performance of Chinese word segmentation significantly, especially for the segmentation of out-of-vocabulary words.
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