Structural Causal Model
Structural causal models (SCMs) are a framework for representing causal relationships between variables, aiming to move beyond mere correlation and understand cause-and-effect. Current research focuses on applying SCMs to diverse domains, including multimodal language models, healthcare, and recommendation systems, often employing techniques like backdoor adjustment and counterfactual reasoning to mitigate confounding biases and improve model interpretability. This work is significant because it enables more robust and reliable causal inference, leading to improved decision-making in various fields and a deeper understanding of complex systems. The development of new algorithms for causal discovery and parameter estimation within SCMs, including those leveraging neural networks and graph representations, is a key area of ongoing investigation.
Papers
Hacking Task Confounder in Meta-Learning
Jingyao Wang, Yi Ren, Zeen Song, Jianqi Zhang, Changwen Zheng, Wenwen Qiang
Towards Human-like Perception: Learning Structural Causal Model in Heterogeneous Graph
Tianqianjin Lin, Kaisong Song, Zhuoren Jiang, Yangyang Kang, Weikang Yuan, Xurui Li, Changlong Sun, Cui Huang, Xiaozhong Liu