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Attention Guided Graph Convolutional Networks for Relation Extraction

机译:用于关系提取的注意力导向图卷积网络

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Dependency trees convey rich structural information that is proven useful for extracting relations among entities in text. However, how to effectively make use of relevant information while ignoring irrelevant information from the dependency trees remains a challenging research question. Existing approaches employing rule based hard-pruning strategies for selecting relevant partial dependency structures may not always yield optimal results. In this work, we propose Attention Guided Graph Convolutional Networks (AGGCNs), a novel model which directly takes full dependency trees as inputs. Our model can be understood as a soft-pruning approach that automatically learns how to selectively attend to the relevant sub-structures useful for the relation extraction task. Extensive results on various tasks including cross-sentence n-axy relation extraction and large-scale sentence-level relation extraction show that our model is able to better leverage the structural information of the full dependency trees, giving significantly better results than previous approaches.
机译:依赖树传达了丰富的结构信息,事实证明,这些信息对于提取文本中实体之间的关系很有用。然而,如何有效地利用相关信息,同时又从依赖树中忽略无关信息仍然是一个具有挑战性的研究问题。现有的采用基于规则的硬修剪策略来选择相关的部分依存结构的方法可能并不总是产生最佳结果。在这项工作中,我们提出了注意力引导图卷积网络(AGGCN),这是一个直接将完整的依赖树作为输入的新颖模型。我们的模型可以理解为一种软修剪方法,可以自动学习如何有选择地关注对关系提取任务有用的相关子结构。在包括交叉句子n轴关系提取和大规模句子级关系提取在内的各种任务上的大量结果表明,我们的模型能够更好地利用完整依赖树的结构信息,比以前的方法具有明显更好的结果。

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