基于层次隐马尔科夫模型的汉语词法分析

Huaping Zhang, Qun Liu, Xueqi Cheng, H. Zhang, Hongkui Yu
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引用次数: 139

摘要

本文提出了一种基于层次隐马尔可夫模型(HHMM)的汉语词法分析方法,该方法将汉语分词、词性标注、消歧和未知词识别整合到一个完整的理论框架中。在分词中应用了基于类的HMM,在这一层中,未知词与词典中列出的常用词一样被处理。在基于角色的HMM中,未知词的识别具有可靠性。在消歧义方面,作者提出了一种N -最短路径策略,在早期阶段,保留前N个分割结果作为候选,并覆盖更多的歧义。各种实验表明,HHMM的每个层次都有助于词法分析。实现了基于hmm的ICTCLAS系统。最近的官方评价表明,ICTCLAS是最好的汉语词汇分析工具之一。总之,hmm对汉语词汇分析是有效的。
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Chinese Lexical Analysis Using Hierarchical Hidden Markov Model
This paper presents a unified approach for Chinese lexical analysis using hierarchical hidden Markov model (HHMM), which aims to incorporate Chinese word segmentation, Part-Of-Speech tagging, disambiguation and unknown words recognition into a whole theoretical frame. A class-based HMM is applied in word segmentation, and in this level unknown words are treated in the same way as common words listed in the lexicon. Unknown words are recognized with reliability in role-based HMM. As for disambiguation, the authors bring forth an n-shortest-path strategy that, in the early stage, reserves top N segmentation results as candidates and covers more ambiguity. Various experiments show that each level in HHMM contributes to lexical analysis. An HHMM-based system ICTCLAS was accomplished. The recent official evaluation indicates that ICTCLAS is one of the best Chinese lexical analyzers. In a word, HHMM is effective to Chinese lexical analysis.
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