Rama Akkiraju, Pinar Keskinocak, et al.
Applied Intelligence
State-of-the-art approaches for Knowledge Base Completion (KBC) exploit deep neural networks trained with both false and true assertions: positive assertions are explicitly taken from the knowledge base, whereas negative ones are generated by random sampling of entities. In this paper, we argue that random sampling is not a good training strategy since it is highly likely to generate a huge number of nonsensical assertions during training, which does not provide relevant training signal to the system. Hence, it slows down the learning process and decreases accuracy. To address this issue, we propose an alternative approach called Distributional Negative Sampling that generates meaningful negative examples which are highly likely to be false. Our approach achieves a significant improvement in Mean Reciprocal Rank values amongst two different KBC algorithms in three standard academic benchmarks.
Rama Akkiraju, Pinar Keskinocak, et al.
Applied Intelligence
Yi Zhou, Parikshit Ram, et al.
ICLR 2023
Albert Atserias, Anuj Dawar, et al.
Journal of the ACM
Yehuda Naveli, Michal Rimon, et al.
AAAI/IAAI 2006