Analyses of environmental phenomena often are concerned with understanding unlikely events such as floods, heatwaves, droughts or high concentrations of pollutants. Yet the majority of the causal inference literature has focused on modelling means, rather than (possibly high) quantiles. We define a general estimator of the population quantile treatment (or exposure) effects (QTE) -- the weighted QTE (WQTE) -- of which the population QTE is a special case, along with a general class of balancing weights incorporating the propensity score. Asymptotic properties of the proposed WQTE estimators are derived. We further propose and compare propensity score regression and two weighted methods based on these balancing weights to understand the causal effect of an exposure on quantiles, allowing for the exposure to be binary, discrete or continuous. Finite sample behavior of the three estimators is studied in simulation. The proposed methods are applied to data taken from the Bavarian Danube catchment area to estimate the 95% QTE of phosphorus on copper concentration in the river.
翻译:环境现象的分析往往与理解洪水、热浪、干旱或污染物高浓度等不常见事件有关,然而,大多数因果推断文献侧重于建模手段,而不是(可能高的)四分位数。我们定义了人口昆虫处理(或接触)效应(QTE)的一般估计者 -- -- 加权QTE(WQTE) -- -- 人口QTE(QQTE)是其中的一个特例,加上包括偏度分在内的一般平衡权重类别。提出了WQTE估计器的消毒特性。我们进一步提议并比较了偏向性评分回归法和基于这些平衡权数的两种加权方法,以了解接触量对四分数(或接触)的因果关系。三个估量器的精度行为在模拟中进行了研究。所提议的方法适用于从巴伐利亚多瑙河流域收集的数据,以估计河中铜浓度的磷酸浓度为95%的量。