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Chinese Textual Entailment Recognition Based on Syntactic Tree Clipping

机译:基于句法树裁剪的中文文本蕴涵识别

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Textual entailment has been proposed as a unifying generic framework for modeling language variability and semantic inference in different Natural Language Processing (NLP) tasks. This paper presents a novel statistical method for recognizing Chinese textual entailment in which lexical, syntactic with semantic matching features are combined together. In order to solve the problems of syntactic tree matching difficulty and tree structure errors caused by Chinese word segmentation, the method firstly clips the syntactic trees into minimum information trees and then computes syntactic matching similarity on them. All features will be used in a voting style under different machine learning methods to predict whether the text sentence can entail the hypothesis sentence in a text-hypothesis pair. The experimental results show that the feature on changing structure of syntactic tree is effective and efficient in Chinese textual entailment.
机译:文本蕴涵已被提出作为在不同自然语言处理(NLP)任务中建模语言可变性和语义推断的统一通用框架。本文提出了一种新的统计方法,该方法将具有语义匹配特征的词汇,句法结合在一起,从而识别中文文本蕴涵。为了解决汉语分词引起的句法匹配困难和树结构错误的问题,该方法首先将句法树剪裁为最小信息树,然后对它们进行句法匹配相似度计算。所有功能都将在不同的机器学习方法下以投票方式使用,以预测文本句子是否可以包含文本-假设对中的假设句子。实验结果表明,句法树的结构变化特征在中文文本蕴涵中是有效和高效的。

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