Point processes are probabilistic tools for modeling event data. While there exists a fast-growing literature studying the relationships between point processes, it remains unexplored how such relationships connect to causal effects. In the presence of unmeasured confounders, parameters from point process models do not necessarily have causal interpretations. We propose an instrumental variable method for causal inference with point process treatment and outcome. We define causal quantities based on potential outcomes and establish nonparametric identification results with a binary instrumental variable. We extend the traditional Wald estimation to deal with point process treatment and outcome, showing that it should be performed after a Fourier transform of the intention-to-treat effects on the treatment and outcome and thus takes the form of deconvolution. We term this as the generalised Wald estimation and propose an estimation strategy based on well-established deconvolution methods.
翻译:虽然研究点进程之间关系的文献在迅速增长,但仍没有探讨这种关系如何与因果关系相联系。在出现非计量的混淆者时,点进程模型的参数不一定有因果关系解释。我们提出一个根据潜在结果和结果进行因果推断的可变方法。我们根据潜在结果确定因果数量,用一个二元工具变量确定非对数识别结果。我们将传统的瓦尔德估计扩大到处理点进程处理和结果,表明这种估计应在意图对治疗和结果的影响发生Fourier变异之后进行,因此采取变异形式。我们将此称为一般的瓦尔德估计,并提议一个基于既定的分解方法的估计战略。