We consider the problem of discovering causal relations from independence constraints selection bias in addition to confounding is present. While the seminal FCI algorithm is sound and complete in this setup, no criterion for the causal interpretation of its output under selection bias is presently known. We focus instead on local patterns of independence relations, where we find no sound method for only three variable that can include background knowledge. Y-Structure patterns are shown to be sound in predicting causal relations from data under selection bias, where cycles may be present. We introduce a finite-sample scoring rule for Y-Structures that is shown to successfully predict causal relations in simulation experiments that include selection mechanisms. On real-world microarray data, we show that a Y-Structure variant performs well across different datasets, potentially circumventing spurious correlations due to selection bias.
翻译:我们除了考虑混乱外,还考虑从独立限制选择偏向中发现因果关系的问题。 虽然在这个设置中,原始的FCI算法是健全和完整的,但目前还不知道根据选择偏向对其产出进行因果关系解释的标准。 我们注重的是当地的独立关系模式,我们发现,对于包括背景知识在内的三个变量来说,没有合理的方法。 Y-Strrectre 模式在预测选择偏向下的数据中的因果关系方面是健全的,因为周期可能存在。我们为Y-Strrrture引入了一个限定抽样评分规则,以成功地预测包括选择机制在内的模拟实验中的因果关系。 关于真实世界的微观阵列数据,我们显示,Y-Strstructurre变量在不同的数据集中表现得非常出色,可能绕过选择偏向的虚假关联。