用于结构与结果预测的因果基础模型 / A Causal Foundation Model for Structure and Outcome Prediction
1️⃣ 一句话总结
本文提出了一种名为TabPFN-CFM的因果基础模型,它能从观察数据中同时预测因果关系和结果,支持因果层次的三级查询,并可利用已知因果图提升预测准确性,在真实数据上表现优于现有方法。
We introduce TabPFN-CFM, a causal foundation model that can handle multiple causal problems. TabPFN-CFM predicts both causal structure and outcomes from observational data, supports queries on all three levels of Pearl's Causal Hierarchy and uses known graph structure when available to improve predictions. TabPFN-CFM is trained on synthetic datasets, and generalises to real datasets, demonstrating improved performance over both structural and outcome prediction baselines.
用于结构与结果预测的因果基础模型 / A Causal Foundation Model for Structure and Outcome Prediction
本文提出了一种名为TabPFN-CFM的因果基础模型,它能从观察数据中同时预测因果关系和结果,支持因果层次的三级查询,并可利用已知因果图提升预测准确性,在真实数据上表现优于现有方法。
源自 arXiv: 2606.26467