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arXiv 提交日期: 2026-02-03
📄 Abstract - Causal Graph Learning via Distributional Invariance of Cause-Effect Relationship

This paper introduces a new framework for recovering causal graphs from observational data, leveraging the observation that the distribution of an effect, conditioned on its causes, remains invariant to changes in the prior distribution of those causes. This insight enables a direct test for potential causal relationships by checking the variance of their corresponding effect-cause conditional distributions across multiple downsampled subsets of the data. These subsets are selected to reflect different prior cause distributions, while preserving the effect-cause conditional relationships. Using this invariance test and exploiting an (empirical) sparsity of most causal graphs, we develop an algorithm that efficiently uncovers causal relationships with quadratic complexity in the number of observational variables, reducing the processing time by up to 25x compared to state-of-the-art methods. Our empirical experiments on a varied benchmark of large-scale datasets show superior or equivalent performance compared to existing works, while achieving enhanced scalability.

顶级标签: machine learning theory
详细标签: causal discovery graph learning distributional invariance causality observational data 或 搜索:

基于因果效应关系分布不变性的因果图学习 / Causal Graph Learning via Distributional Invariance of Cause-Effect Relationship


1️⃣ 一句话总结

这篇论文提出了一种新方法,通过检验‘原因’变化时‘结果’的条件分布是否保持不变来高效地从观测数据中学习因果图,其算法比现有先进方法快达25倍,且在大规模数据集上表现优异。

源自 arXiv: 2602.03353