WUST SVM-Based System at NTCIR-9 RITE Task
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چکیده
ABSTRACT This paper describes our work in NTCIR-9 on RITE Binary-class (BC) subtask and Multi-class (MC) subtask in Simplified Chinese. We use classification method and SVM classifier to identify the textual entailment. We totally use thirteen statistical features as the classification features in our system. The system includes three parts: (1) Preprocessing, (2) Feature Extraction, (3) SVM Classifier. In these three parts, we mainly focus on the second one.
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تاریخ انتشار 2011