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Detecting New Words from Chinese Text Using Latent Semi-CRF Models
Xiao SUN Degen HUANG Fuji REN
Publication
IEICE TRANSACTIONS on Information and Systems
Vol.E93-D
No.6
pp.1386-1393 Publication Date: 2010/06/01 Online ISSN: 1745-1361
DOI: 10.1587/transinf.E93.D.1386 Print ISSN: 0916-8532 Type of Manuscript: Special Section PAPER (Special Section on Info-Plosion) Category: Natural Language Processing Keyword: natural language processing, new word detection, new words POS tagging, conditional random fields, latent-dynamic CRF, semi-CRF, latent semi-CRF,
Full Text: PDF(221.9KB)>>
Summary:
Chinese new words and their part-of-speech (POS) are particularly problematic in Chinese natural language processing. With the fast development of internet and information technology, it is impossible to get a complete system dictionary for Chinese natural language processing, as new words out of the basic system dictionary are always being created. A latent semi-CRF model, which combines the strengths of LDCRF (Latent-Dynamic Conditional Random Field) and semi-CRF, is proposed to detect the new words together with their POS synchronously regardless of the types of the new words from the Chinese text without being pre-segmented. Unlike the original semi-CRF, the LDCRF is applied to generate the candidate entities for training and testing the latent semi-CRF, which accelerates the training speed and decreases the computation cost. The complexity of the latent semi-CRF could be further adjusted by tuning the number of hidden variables in LDCRF and the number of the candidate entities from the Nbest outputs of the LDCRF. A new-words-generating framework is proposed for model training and testing, under which the definitions and distributions of the new words conform to the ones existing in real text. Specific features called "Global Fragment Information" for new word detection and POS tagging are adopted in the model training and testing. The experimental results show that the proposed method is capable of detecting even low frequency new words together with their POS tags. The proposed model is found to be performing competitively with the state-of-the-art models presented.
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