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LKR
2008

Design and Prototype of a Large-Scale and Fully Sense-Tagged Corpus

13 years 5 months ago
Design and Prototype of a Large-Scale and Fully Sense-Tagged Corpus
Sense tagged corpus plays a very crucial role to Natural Language Processing, especially on the research of word sense disambiguation and natural language understanding. Having a large-scale Chinese sense tagged corpus seems to be very essential, but in fact, such large-scale corpus is the critical deficiency at the current stage. This paper is aimed to design a large-scale Chinese full text sense tagged Corpus, which contains over 110,000 words. The Academia Sinica Balanced Corpus of Modern Chinese (also named Sinica Corpus) is treated as the tagging object, and there are 56 full texts extracted from this corpus. By using the N-gram statistics and the information of collocation, the preparation work for automatic sense tagging is planned by combining the techniques and methods of machine learning and the probability model. In order to achieve a highly precise result, the result of automatic sense tagging needs the touch of manual revising.
Sue-jin Ker, Chu-Ren Huang, Jia-Fei Hong, Shi-Yin
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where LKR
Authors Sue-jin Ker, Chu-Ren Huang, Jia-Fei Hong, Shi-Yin Liu, Hui-Ling Jian, I-Li Su, Shu-Kai Hsieh
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