Confounding variables are a recurrent challenge for causal discovery and inference. In many situations, complex causal mechanisms only manifest themselves in extreme events, or take simpler forms in the extremes. Stimulated by data on extreme river flows and precipitation, we introduce a new causal discovery methodology for heavy-tailed variables that allows the effect of a known potential confounder to be almost entirely removed when the variables have comparable tails, and also decreases it sufficiently to enable correct causal inference when the confounder has a heavier tail. We also introduce a new parametric estimator for the existing causal tail coefficient and a permutation test. Simulations show that the methods work well and the ideas are applied to the motivating dataset.
翻译:在很多情况下,复杂的因果机制只表现在极端事件中,或采取更简单的极端形式。根据关于极端河流流量和降水的数据,我们为重尾变数采用了一种新的因果发现方法,在变数的尾部相似时,可以几乎完全消除已知的潜在混淆者的影响,还可以减少这种影响,以便能够在混结者尾部较重时进行正确的因果推断。我们还为现有的因果尾数系数和变异测试引入了新的参数估测器。模拟表明,方法运作良好,想法适用于激励数据集。