Causal Pattern
Causal pattern research aims to identify and quantify cause-and-effect relationships within complex systems, moving beyond simple correlations to understand underlying mechanisms. Current research focuses on developing and applying methods like structural causal models, Granger causality, and various machine learning techniques (e.g., sparse regression, GNNs) to uncover causal patterns in diverse data types, including time series, tabular data, and even images. This work has significant implications for various fields, improving the reliability and interpretability of models in areas such as healthcare, agriculture, finance, and autonomous systems by enabling more robust predictions and informed decision-making.
Papers
On Heterogeneous Treatment Effects in Heterogeneous Causal Graphs
Richard A Watson, Hengrui Cai, Xinming An, Samuel McLean, Rui Song
Emerging Synergies in Causality and Deep Generative Models: A Survey
Guanglin Zhou, Shaoan Xie, Guangyuan Hao, Shiming Chen, Biwei Huang, Xiwei Xu, Chen Wang, Liming Zhu, Lina Yao, Kun Zhang