| Literature DB >> 35821978 |
Justin Lovelace1, Denis Newman-Griffis2, Shikhar Vashishth3, Jill Fain Lehman4, Carolyn Penstein Rosé1.
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.Entities:
Year: 2021 PMID: 35821978 PMCID: PMC9272461 DOI: 10.18653/v1/2021.acl-long.82
Source DB: PubMed Journal: Proc Conf Assoc Comput Linguist Meet ISSN: 0736-587X