Authors
Louis Clouâtre, Philippe Trempe, Amal Zouaq, Sarath Chandar
Publication date
2021
Journal
ACL/IJCNLP (Findings) 2021
Pages
4321-4331
Publisher
ACL
Description
Knowledge Bases (KBs) are easy to query, verifiable, and interpretable. They however scale with man-hours and high-quality data. Masked Language Models (MLMs), such as BERT, scale with computing power as well as unstructured raw text data. The knowledge contained within those models is however not directly interpretable. We propose to perform link prediction with MLMs to address both the KBs scalability issues and the MLMs interpretability issues. To do that we introduce MLMLM, Mean Likelihood Masked Language Model, an approach comparing the mean likelihood of generating the different entities to perform link prediction in a tractable manner. We obtain State of the Art (SotA) results on the WN18RR dataset and the best non-entity-embedding based results on the FB15k-237 dataset. We also obtain convincing results on link prediction on previously unseen entities, making MLMLM a suitable approach to introducing new entities to a KB.
Total citations
202120222023202459158
Scholar articles
L Clouatre, P Trempe, A Zouaq, S Chandar - arXiv preprint arXiv:2009.07058, 2020