Causal Direction
Causal direction research aims to determine the cause-and-effect relationships between variables, moving beyond simple correlations to understand underlying mechanisms. Current research focuses on developing robust methods for causal discovery from observational data, often employing techniques like Bayesian networks, structural causal models, and graph neural networks, as well as leveraging large language models to extract causal information from text and data. This field is crucial for advancing scientific understanding across diverse disciplines and informing data-driven decision-making in areas such as healthcare, economics, and engineering, by enabling more accurate predictions and interventions.
Papers
Root Cause Analysis of Outliers with Missing Structural Knowledge
Nastaran Okati, Sergio Hernan Garrido Mejia, William Roy Orchard, Patrick Blöbaum, Dominik Janzing
Think out Loud: Emotion Deducing Explanation in Dialogues
Jiangnan Li, Zheng Lin, Lanrui Wang, Qingyi Si, Yanan Cao, Mo Yu, Peng Fu, Weiping Wang, Jie Zhou