WUST at NTCIR-11 RITE-VAL System Validation Task
نویسندگان
چکیده
This paper describes our work in NTCIR-11 on RITE-VAL System Validation task in Simplified Chinese including Binary-class (BC) subtask and Multi-class (MC) subtask. We construct the classification model based on support vector machine to recognize semantic inference in Chinese text pair. In our system, we use multiple features including statistical features, lexical features and syntactic features. Particularly, for contradiction recognition, we put forward the Chinese textual contradiction approach using linguistic phenomena.
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