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LREC
2010

Predicting Morphological Types of Chinese Bi-Character Words by Machine Learning Approaches

14 years 28 days ago
Predicting Morphological Types of Chinese Bi-Character Words by Machine Learning Approaches
This paper presented an overview of Chinese bi-character words' morphological types, and proposed a set of features for machine learning approaches to predict these types based on composite characters' information. First, eight morphological types were defined, and 6,500 Chinese bi-character words were annotated with these types. After pre-processing, 6,178 words were selected to construct a corpus named Reduced Set. We analyzed Reduced Set and conducted the inter-annotator agreement test. The average kappa value of 0.67 indicates a substantial agreement. Second, Bi-character words' morphological types are considered strongly related with the composite characters' parts of speech in this paper, so we proposed a set of features which can simply be extracted from dictionaries to indicate the characters' "tendency" of parts of speech. Finally, we used these features and adopted three machine learning algorithms, SVM, CRF, and Na
Ting-Hao Huang, Lun-Wei Ku, Hsin-Hsi Chen
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2010
Where LREC
Authors Ting-Hao Huang, Lun-Wei Ku, Hsin-Hsi Chen
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