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Automatic identification of rhetorical relations among intra-sentence discourse segments in Arabic

机译:阿拉伯语中句子语篇段细分中的修辞关系的自动识别

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Identifying discourse relations, whether implicit or explicit, has seen renewed interest and remains an open challenge. We present the first model that automatically identifies both explicit and implicit rhetorical relations among intra-sentence discourse segments in Arabic text. We build a large discourse annotated corpora following the rhetorical structure theory framework. Our list of rhetorical relations is organised into three level hierarchies of 23 fine-grained relations, grouped into seven classes. To automatically learn these relations, we evaluate and reuse features from literature, and contribute three additional features: accusative of purpose, specific connectives and the number of antonym words. We perform experiments on identifying fine-grained and coarse-grained relations. The results show that compared with all the baselines, our model achieves the best performance in most cases, with an accuracy of 91.05%.
机译:确定话语关系,无论是隐含的还是明确,都已见证兴趣,仍然是一个开放的挑战。 我们介绍了第一个模型,它自动识别阿拉伯语文本中的句子内语言段之间的明确和隐含的修辞关系。 在修辞结构理论框架之后,我们建立了一个大型话题注释基础。 我们的修辞关系列表被组织成三个细粒度关系的三级层次,分为七个课程。 为了自动学习这些关系,我们评估和重用文献的功能,并贡献三个附加功能:指控的目的,特定的连接和反义词的数量。 我们对识别细粒度和粗粒度的关系进行实验。 结果表明,与所有基线相比,我们的模型在大多数情况下实现了最佳性能,准确性为91.05%。

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