cs.AI updates on arXiv.org 07月03日 12:07
Relational Causal Discovery with Latent Confounders
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本文提出RelFCI算法,解决关系数据中因果效应估计的难题,适用于未知潜在混杂因子的关系数据,并通过实验验证其有效性。

arXiv:2507.01700v1 Announce Type: cross Abstract: Estimating causal effects from real-world relational data can be challenging when the underlying causal model and potential confounders are unknown. While several causal discovery algorithms exist for learning causal models with latent confounders from data, they assume that the data is independent and identically distributed (i.i.d.) and are not well-suited for learning from relational data. Similarly, existing relational causal discovery algorithms assume causal sufficiency, which is unrealistic for many real-world datasets. To address this gap, we propose RelFCI, a sound and complete causal discovery algorithm for relational data with latent confounders. Our work builds upon the Fast Causal Inference (FCI) and Relational Causal Discovery (RCD) algorithms and it defines new graphical models, necessary to support causal discovery in relational domains. We also establish soundness and completeness guarantees for relational d-separation with latent confounders. We present experimental results demonstrating the effectiveness of RelFCI in identifying the correct causal structure in relational causal models with latent confounders.

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相关标签

RelFCI算法 关系数据 因果发现 潜在混杂因子 实验验证
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