论文标题
从治疗和结果序列的政策干预措施的因果建模
Causal Modeling of Policy Interventions From Sequences of Treatments and Outcomes
论文作者
论文摘要
治疗政策定义了何时以及应用哪些治疗来影响感兴趣的某些结果。数据驱动的决策需要预测如果策略更改会发生什么。现有的方法可以预测结果如何在不同情况下演变,假设未来治疗的暂定序列是事先固定的,而实际上,治疗是由政策随机确定的,并且可能取决于以前的治疗效率。因此,如果治疗策略未知或需要反事实分析,则当前方法不适用。为了应对这些局限性,我们通过结合高斯过程和点过程,在连续时间共同对处理和结果进行建模。我们的模型可以根据治疗和结果的观察序列对治疗政策进行估算,并且可以预测对治疗政策进行干预后结果的介入和反事实进展(与单个治疗的因果关系相反)。我们使用有关血糖进展的现实世界和半合成数据显示,我们的方法可以比现有替代方案更准确地回答因果查询。
A treatment policy defines when and what treatments are applied to affect some outcome of interest. Data-driven decision-making requires the ability to predict what happens if a policy is changed. Existing methods that predict how the outcome evolves under different scenarios assume that the tentative sequences of future treatments are fixed in advance, while in practice the treatments are determined stochastically by a policy and may depend, for example, on the efficiency of previous treatments. Therefore, the current methods are not applicable if the treatment policy is unknown or a counterfactual analysis is needed. To handle these limitations, we model the treatments and outcomes jointly in continuous time, by combining Gaussian processes and point processes. Our model enables the estimation of a treatment policy from observational sequences of treatments and outcomes, and it can predict the interventional and counterfactual progression of the outcome after an intervention on the treatment policy (in contrast with the causal effect of a single treatment). We show with real-world and semi-synthetic data on blood glucose progression that our method can answer causal queries more accurately than existing alternatives.