Robust Knowledge Graph Completion with Stacked Convolutions and a Student Re-Ranking Network.

Justin Lovelace, Denis Newman-Griffis, Shikhar Vashishth, Jill Fain Lehman, Carolyn Penstein Rosé
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引用次数: 16

Abstract

Knowledge Graph (KG) completion research usually focuses on densely connected benchmark datasets that are not representative of real KGs. We curate two KG datasets that include biomedical and encyclopedic knowledge and use an existing commonsense KG dataset to explore KG completion in the more realistic setting where dense connectivity is not guaranteed. We develop a deep convolutional network that utilizes textual entity representations and demonstrate that our model outperforms recent KG completion methods in this challenging setting. We find that our model's performance improvements stem primarily from its robustness to sparsity. We then distill the knowledge from the convolutional network into a student network that re-ranks promising candidate entities. This re-ranking stage leads to further improvements in performance and demonstrates the effectiveness of entity re-ranking for KG completion.

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基于堆叠卷积的鲁棒知识图谱补全与学生重排序网络。
知识图谱(Knowledge Graph, KG)完井研究通常侧重于密集连接的基准数据集,这些数据集不能代表真实的知识图谱。我们整理了两个KG数据集,包括生物医学和百科知识,并使用现有的常识KG数据集来探索更现实的、不能保证密集连接的知识图谱完井。我们开发了一个利用文本实体表示的深度卷积网络,并证明我们的模型在这个具有挑战性的环境中优于最近的KG补全方法。我们发现我们的模型的性能改进主要源于它对稀疏性的鲁棒性。然后,我们将卷积网络中的知识提取到一个学生网络中,该网络对有希望的候选实体进行重新排序。这个重新排序阶段可以进一步提高性能,并证明了KG完井实体重新排序的有效性。
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