CAT: Customized Adversarial Training for Improved Robustness
Minhao Cheng, Qi Lei, et al.
IJCAI 2022
For many years, link prediction on knowledge graphs (KGs) has been a purely transductive task, not allowing for reasoning on unseen entities. Recently, increasing efforts are put into exploring semi- and fully inductive scenarios, enabling inference over unseen and emerging entities. Still, all these approaches only consider triple-based KGs, whereas their richer counterparts, hyper-relational KGs (e.g., Wikidata), have not yet been properly studied. In this work, we study the benefits of employing hyper-relational KGs on a wide range of semi- and fully inductive link prediction tasks powered by recent advancements in graph neural networks. Our experiments demonstrate that qualifiers over typed edges can lead to performance improvements of 6% of absolute gains (for the Hits@10 metric) compared to triple-only baselines. Our code is available at https://github.com/mali-git/hyper relational ilp.
Minhao Cheng, Qi Lei, et al.
IJCAI 2022
Praveen Venkateswaran, Vinod Muthusamy, et al.
IJCAI 2022
Takayuki Katsuki, Kohei Miyaguchi, et al.
IJCAI 2022
Mayank Mishra, Dhiraj Madan, et al.
IJCAI 2022