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Implicit discourse relation identification based on tree structure neural network

机译:基于树状结构神经网络的内隐语篇关系识别

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This paper presents a tree structure neural network to predict the sense of implicit discourse relation in English. Tree structure neural network, also called recursive neural network, has been proved to be powerful in modeling compositionality in natural language using parse tree based structural representations. By integrating the semantic information along the parse trees, the tree structure neural network shows its superiority in capturing the structure information and composition semantics, which is meaningful for the deep semantic problems, such as sentiment analysis and discourse structure understanding. Experimental results obtained on Penn Discourse Tree Bank show that the tree structure neural network is more effective to predict the logical semantic relations between discourse texts when compared with the traditional shallow feature classifiers and sequential deep semantic models.
机译:本文提出了一种树状结构的神经网络,用于预测英语中隐性话语关系的意义。树结构神经网络(也称为递归神经网络)已被证明在使用基于解析树的结构表示形式的自然语言中的组合性建模方面具有强大的功能。通过将语义信息沿语法分析树进行整合,树结构神经网络显示出其在捕获结构信息和构成语义方面的优越性,这对于诸如情感分析和语篇结构理解之类的深层语义问题具有重要意义。在Penn语篇树库中获得的实验结果表明,与传统的浅层特征分类器和顺序的深层语义模型相比,树形结构神经网络更有效地预测了语篇文本之间的逻辑语义关系。

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