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Graph Neural Networks with Generated Parameters for Relation Extraction

机译:具有关系提取的生成参数的图神经网络

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In this paper, we propose a novel graph neural network with generated parameters (GP-GNNs). The parameters in the propagation module, i.e. the transition matrices used in message passing procedure, are produced by a generator taking natural language sentences as inputs. We verify GP-GNNs in relation extraction from text, both on bag- and instance-settings. Experimental results on a human-annotated dataset and two distantly supervised datasets show that multi-hop reasoning mechanism yields significant improvements. We also perform a qualitative analysis to demonstrate that our model could discover more accurate relations by multi-hop relational reasoning.
机译:在本文中,我们提出了一种具有生成参数(GP-GNN)的新型图神经网络。传播模块中的参数,即在消息传递过程中使用的过渡矩阵,是由生成器以自然语言句子作为输入来生成的。我们在包和实例设置上验证从文本中提取关系的GP-GNN。在带有人类注释的数据集和两个远程监督的数据集上的实验结果表明,多跳推理机制产生了显着的改进。我们还进行了定性分析,以证明我们的模型可以通过多跳关系推理发现更准确的关系。

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