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Discovering implicit intention-level knowledge from natural-language texts

机译:从自然语言文本中发现隐含的意图级知识

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摘要

In this paper, we propose a new approach to automatic discovery of implicit rhetorical information from texts based on evolutionary computation methods. In order to guide the search for rhetorical connections from natural-language texts, the model uses previously obtained training information which involves semantic and structural criteria. The main features of the model and new designed operators and evaluation functions are discussed, and the different experiments assessing the robustness and accuracy of the approach are described. Experimental results show the promise of evolutionary methods for rhetorical role discovery.
机译:在本文中,我们提出了一种基于进化计算方法从文本自动发现隐式修辞信息的新方法。为了指导从自然语言文本中寻找修辞联系,该模型使用了先前获得的涉及语义和结构标准的训练信息。讨论了模型的主要特征以及新设计的运算符和评估函数,并描述了评估该方法的鲁棒性和准确性的不同实验。实验结果表明了进化方法在修辞角色发现中的应用前景。

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