Shivashankar Subramanian, Ioana Baldini, et al.
IAAI 2020
In this work, we present a dual learning ap- proach for unsupervised text to path and path to text transfers in Commonsense Knowledge Bases (KBs). We investigate the impact of weak supervision by creating a weakly su- pervised dataset and show that even a slight amount of supervision can significantly im- prove the model performance and enable better-quality transfers. We examine different model architectures, and evaluation metrics, proposing a novel Commonsense KB comple- tion metric tailored for generative models. Ex- tensive experimental results show that the pro- posed method compares very favorably to the existing baselines. This approach is a viable step towards a more advanced system for au- tomatic KB construction/expansion and the re- verse operation of KB conversion to coherent textual descriptions.
Shivashankar Subramanian, Ioana Baldini, et al.
IAAI 2020
Kevin Gu, Eva Tuecke, et al.
ICML 2024
Gabriele Picco, Lam Thanh Hoang, et al.
EMNLP 2021
Kshitij P. Fadnis, Nathaniel Mills, et al.
EMNLP 2020