Using A Semantic Classification in Parsing Chinese : Some Preliminary Results
نویسنده
چکیده
This paper describes a semantic classification of Chinese and compares its performance with CKIP's word-class classification on the task of identifying the attributive dependency relation and the unmarked coordinative dependency relation of word bigrams made up from nouns, verbs, and adjectives.
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