Causal Knowledge
Causal knowledge research aims to understand and model cause-and-effect relationships, moving beyond mere correlation to uncover underlying mechanisms. Current efforts focus on developing and applying causal knowledge graphs, often integrated with large language models and graph neural networks, to extract and reason with causal information from diverse data sources like text, time series, and financial statements. This work has significant implications for improving the explainability and robustness of AI systems, enhancing decision-making in various fields, and advancing scientific understanding across disciplines.
Papers
November 15, 2024
A Survey of Event Causality Identification: Principles, Taxonomy, Challenges, and Assessment
Zefan Zeng, Qing Cheng, Xingchen Hu, Yuehang Si, Zhong Liu
Increasing the Accessibility of Causal Domain Knowledge via Causal Information Extraction Methods: A Case Study in the Semiconductor Manufacturing Industry
Houssam Razouk, Leonie Benischke, Daniel Garber, Roman Kern
October 25, 2024
October 20, 2024
October 18, 2024
October 16, 2024
September 27, 2024
August 31, 2024
August 30, 2024
August 15, 2024
August 3, 2024
August 2, 2024
July 30, 2024
June 25, 2024
May 14, 2024
April 26, 2024
April 17, 2024
March 21, 2024