Background Knowledge
Background knowledge integration is a rapidly developing area of research focusing on improving machine learning models by incorporating prior information, whether it be structured knowledge graphs, logical constraints, or even common-sense reasoning from large language models. Current efforts concentrate on leveraging this background knowledge for tasks such as improved image segmentation (e.g., separating foreground objects from background), causal inference, and more efficient reinforcement learning. This research is significant because it addresses limitations of data-driven approaches by enhancing model accuracy, robustness, and sample efficiency, leading to more reliable and interpretable AI systems across various applications.
Papers
October 21, 2022
October 18, 2022
September 27, 2022
September 6, 2022
July 19, 2022
July 14, 2022
June 17, 2022
June 14, 2022
June 10, 2022
May 1, 2022
March 30, 2022
March 28, 2022
March 26, 2022
January 31, 2022
December 16, 2021