文章詳目資料

International Journal of Computational Linguistics And Chinese Language Processing THCI

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篇名 Chinese Chunking Based on Maximum Entropy Markov Models
卷期 11:2
作者 Sun, Guang-luHuang, Chang-ningWang, Xiao-longXu, Zhi-ming
頁次 115-135
關鍵字 Chinese ChunkingSmoothing AlgorithmFeature TemplateChunking SpecificationMaximum Entropy Markov ModelsTHCI Core
出刊日期 200606

中文摘要

英文摘要

This paper presents a new Chinese chunking method based on maximum entropy
Markov models. We firstly present two types of Chinese chunking specifications and data sets, based on which the chunking models are applied. Then we describe the hidden Markov chunking model and maximum entropy chunking model. Based on our analysis of the two models, we propose a maximum entropy Markov chunking model that combines the transition probabilities and conditional probabilities of states. Experimental results for two types of data sets show that this approach achieves impressive accuracy in terms of the F-score: 91.02% and
92.68%, respectively. Compared with the hidden Markov chunking model and
maximum entropy chunking model, based on the same data set, the new chunking model achieves better performance.

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