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Domain Adapted Distant Supervision for Pedagogically Motivated Relation Extraction

机译:域改善了对教学动机关系提取的遥远监督

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In this paper we present a relation extraction system that given a text extracts pedagogically motivated relation types, as a previous step to obtaining a semantic representation of the text which will make possible to automatically generate questions for reading comprehension. The system maps pedagogically motivated relations with relations from ConceptNet and deploys Distant Supervision for relation extraction. We run a study on a subset of those relationships in order to analyse the viability of our approach. For that, we build a domain-specific relation extraction system and explore two relation extraction models: a state-of-the-art model based on transfer learning and a discrete feature based machine learning model. Experiments show that the neural model obtains better results in terms of F-score and we yield promising results on the subset of relations suitable for pedagogical purposes. We thus consider that distant supervision for relation extraction is a valid approach in our target domain, i.e. biology.
机译:在本文中,我们介绍了一个关系提取系统,给出了一种文本提取的教学动机关系类型,作为获得可以自动生成读取理解的问题的文本语义表示的前一步骤。系统地图与从概念网络的关系进行教学动机关系,并部署了关系提取的远程监督。我们对这些关系的子集进行研究,以便分析我们方法的可行性。为此,我们构建一个特定于域的关系提取系统,并探索两个关系提取模型:基于传输学习的最先进模型和基于离散特征的机器学习模型。实验表明,神经模型在F评分方面获得了更好的结果,并在适合教学目的的关系中产生有希望的结果。因此,我们认为,对关系提取的遥远监督是我们目标领域的有效方法,即生物学。

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