A Chinese word segmentation and POS tagging system for readability research
No Thumbnail Available
Date
2012-11-15
Authors
Chang, T. H.
Sung, Y. T.
Lee, Y. T.
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
In recent years, readability research has relied on applications of natural language processing techniques to analyze documents. However, Chinese sentences consist of characters and with no blanks between words. Therefore, a mistake on word segmentation and/or part-of-speech tagging for Chinese sentences will result in many errors in the follow-up analysis. CRF model,is recently the most popular and successful method for Chinese word segmentation. However, due to such problems as reiterative locution, unknown words and incomplete sentences, many readings for children cannot be processed accurately by CRF model. This study aims to develop a Chinese word segmentation and POS tagging system called WeCan. This system is composed of bigram model, SPLR algorithm, unknown words extraction and rule bases. WeCan has been applied to the preprocessing procedure of CRIE. In preliminary experiments, it also worked well on the elementary school textbook in Taiwan.