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Chinese Semantic Role Labeling with Hierarchical Semantic Knowledge

机译:具有分层语义知识的中文语义角色标签

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This paper reports our work on Chinese semantic role labeling, which takes advantage of hierarchical semantic knowledge from a common sense knowledge base named HowNet. On one hand, the words in lexical features such as predicate and head word are generalized with their hypernyms in HowNet. On the other hand, the hypernym-hyponym relation between sememes is used to capture the semantic similarity between verbs. Experiment results show that both of the two methods can help our system achieve significant improvements on semantic role classification precision with golden parses as the input, by alleviating the problem of data sparseness. Further experiment indicates that by using fully automatic parses as the input, the accuracy of Chinese semantic role labeling can be close to the English state of the art.
机译:本文报告了我们在中文语义角色标签方面的工作,该工作利用了来自名为HowNet的常识知识库中的分层语义知识。一方面,词汇特征中的词(例如谓词和主词)在HowNet中用其上位词进行了概括。另一方面,音素之间的上位词-同义词关系被用来捕获动词之间的语义相似性。实验结果表明,两种方法都可以通过减轻数据稀疏性,帮助我们的系统在以金色解析为输入的情况下,显着提高语义角色分类的准确性。进一步的实验表明,通过使用全自动语法分析作为输入,中文语义角色标签的准确性可以接近英语的最新水平。

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